{
 "metadata": {
  "name": ""
 },
 "nbformat": 3,
 "nbformat_minor": 0,
 "worksheets": [
  {
   "cells": [
    {
     "cell_type": "heading",
     "level": 1,
     "metadata": {},
     "source": [
      "Variable Importance with Completely Randomized Trees"
     ]
    },
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "This notebook is an empirical evaluation of [Understanding variable importances in forests of randomized trees](http://orbi.ulg.ac.be/handle/2268/155642) by Gilles Louppe, Louis Wehenkel, Antonio Sutera and Pierre Geurts."
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "%matplotlib inline\n",
      "from copy import copy\n",
      "import numpy as np\n",
      "import matplotlib.pyplot as plt\n",
      "from sklearn.datasets import load_digits\n",
      "from sklearn.ensemble import ExtraTreesClassifier"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [],
     "prompt_number": 1
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "digits = load_digits()\n",
      "rng = np.random.RandomState(42)"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [],
     "prompt_number": 2
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "X_continous, y = digits.data, digits.target"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [],
     "prompt_number": 3
    },
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "Binarize the features to make the problem closer to the setup from the paper that only deals with discrete variables."
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "X_orig = (X_continous > np.median(X_continous, axis=0)).astype(np.float32)"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [],
     "prompt_number": 4
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "X_orig"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "pyout",
       "prompt_number": 5,
       "text": [
        "array([[ 0.,  0.,  1., ...,  0.,  0.,  0.],\n",
        "       [ 0.,  0.,  0., ...,  1.,  0.,  0.],\n",
        "       [ 0.,  0.,  0., ...,  1.,  1.,  0.],\n",
        "       ..., \n",
        "       [ 0.,  0.,  0., ...,  0.,  0.,  0.],\n",
        "       [ 0.,  0.,  0., ...,  1.,  0.,  0.],\n",
        "       [ 0.,  0.,  1., ...,  1.,  1.,  0.]], dtype=float32)"
       ]
      }
     ],
     "prompt_number": 5
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "n_samples, n_features = X_orig.shape\n",
      "n_samples, n_features"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "pyout",
       "prompt_number": 6,
       "text": [
        "(1797, 64)"
       ]
      }
     ],
     "prompt_number": 6
    },
    {
     "cell_type": "heading",
     "level": 2,
     "metadata": {},
     "source": [
      "Noisy variables generated from the normal distribution"
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "n_features_noise_1 = 10\n",
      "n_features_noise_2 = 100\n",
      "\n",
      "X_noise_1 = np.hstack([X_orig, rng.normal(size=(n_samples, n_features_noise_1))])\n",
      "X_noise_2 = np.hstack([X_orig, rng.normal(size=(n_samples, n_features_noise_2))])"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [],
     "prompt_number": 7
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "n_estimators = 100\n",
      "extra_trees = ExtraTreesClassifier(n_estimators, n_jobs=2, random_state=0)\n",
      "random_trees = ExtraTreesClassifier(n_estimators, max_features=1, n_jobs=2, random_state=0)"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [],
     "prompt_number": 8
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "def compute_importances(ensemble, normalize=False):\n",
      "    trees_importances = [base_model.tree_.compute_feature_importances(normalize=normalize)\n",
      "                         for base_model in ensemble.estimators_]\n",
      "    return sum(trees_importances) / len(trees_importances)\n",
      "\n",
      "def plot_feature_importances(importances, normalize=False, color=None, alpha=0.5, label=None, chunk=None):\n",
      "    if hasattr(importances, 'estimators_'):\n",
      "        importances = compute_importances(importances, normalize=normalize)\n",
      "    if chunk is not None:\n",
      "        importances = importances[chunk]\n",
      "    plt.bar(range(len(importances)), importances, color=color, alpha=alpha, label=label)"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [],
     "prompt_number": 68
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(extra_trees.fit(X_orig, y), label='extra')\n",
      "plot_feature_importances(random_trees.fit(X_orig, y), color='g', label='random')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7AAAADFCAYAAABtuh4tAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAAAAADAs/D+fcRtbgvb3pwAAAABJRU5ErkJggg==\n",
       "text": [
        "<matplotlib.figure.Figure at 0x107c3af90>"
       ]
      }
     ],
     "prompt_number": 10
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(extra_trees.fit(X_noise_1, y), label='extra')\n",
      "plot_feature_importances(random_trees.fit(X_noise_1, y), color='g', label='random')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7AAAADFCAYAAABtuh4tAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n55wLAAAAAElFTkSuQmCC\n",
       "text": [
        "<matplotlib.figure.Figure at 0x107c395d0>"
       ]
      }
     ],
     "prompt_number": 11
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(extra_trees.fit(X_noise_1, y), label='extra', normalize=True)\n",
      "plot_feature_importances(random_trees.fit(X_noise_1, y), color='g', label='random', normalize=True)\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7AAAADFCAYAAABtuh4tAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
       "text": [
        "<matplotlib.figure.Figure at 0x107c32690>"
       ]
      }
     ],
     "prompt_number": 12
    },
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "Normalization does not seem to be the issue: the extra noisy variables badly impact the random trees."
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(extra_trees.fit(X_noise_2, y), label='extra')\n",
      "plot_feature_importances(random_trees.fit(X_noise_2, y), color='g', label='random')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7MAAADFCAYAAACGjaUuAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
       "text": [
        "<matplotlib.figure.Figure at 0x107e01a50>"
       ]
      }
     ],
     "prompt_number": 13
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(extra_trees.fit(X_noise_2, y), label='extra', normalize=True)\n",
      "plot_feature_importances(random_trees.fit(X_noise_2, y), color='g', label='random', normalize=True)\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7MAAADFCAYAAACGjaUuAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAAAABhySWQAAAADAgEMyCwAAAAAYcP4fVU6JAdZMZYQAAAAASUVORK5CYII=\n",
       "text": [
        "<matplotlib.figure.Figure at 0x1086c3190>"
       ]
      }
     ],
     "prompt_number": 14
    },
    {
     "cell_type": "heading",
     "level": 2,
     "metadata": {},
     "source": [
      "Noisy variables generated by feature-wise shuffling of true variables"
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "def shuffle_columns(X, copy=True):\n",
      "    if copy:\n",
      "        X = X.copy()\n",
      "    for i in range(X.shape[1]):\n",
      "        rng.shuffle(X[:, i])\n",
      "    return X\n",
      "\n",
      "X_shuffled = shuffle_columns(X_orig)\n",
      "X_shuffled.shape"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "pyout",
       "prompt_number": 15,
       "text": [
        "(1797, 64)"
       ]
      }
     ],
     "prompt_number": 15
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "X_noise_3 = np.hstack([X_orig, X_shuffled[:, :10]])\n",
      "X_noise_4 = np.hstack([X_orig, X_shuffled])"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [],
     "prompt_number": 16
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(extra_trees.fit(X_noise_3, y), label='extra')\n",
      "plot_feature_importances(random_trees.fit(X_noise_3, y), color='g', label='random')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7AAAADFCAYAAABtuh4tAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAEzh/wNPSkdMPRSzjQAAAABJRU5ErkJggg==\n",
       "text": [
        "<matplotlib.figure.Figure at 0x1087b8990>"
       ]
      }
     ],
     "prompt_number": 17
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(extra_trees.fit(X_noise_4, y), label='extra')\n",
      "plot_feature_importances(random_trees.fit(X_noise_4, y), color='g', label='random')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7MAAADFCAYAAACGjaUuAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
       "text": [
        "<matplotlib.figure.Figure at 0x1087b8a90>"
       ]
      }
     ],
     "prompt_number": 18
    },
    {
     "cell_type": "heading",
     "level": 2,
     "metadata": {},
     "source": [
      "Variable Importances adjusted for chance (against random feature-wise random permutations)"
     ]
    },
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "Naive way to measure the chance level of variable importances:"
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "def compute_permutation_importances(ensemble, X, y, n_permutations=1):\n",
      "    permutation_importances = []\n",
      "    for i in range(n_permutations):\n",
      "        ensemble.fit(shuffle_columns(X), y)\n",
      "        permutation_importances.append(compute_importances(ensemble))   \n",
      "    permutation_importances = sum(permutation_importances) / len(permutation_importances)\n",
      "    return permutation_importances\n",
      "\n",
      "def compute_adjusted_importances(ensemble, X, y, n_permutations=3):\n",
      "    ensemble.fit(X, y)\n",
      "    variable_importances = compute_importances(ensemble)\n",
      "    permutation_importances = compute_permutation_importances(\n",
      "        ensemble, X, y, n_permutations=n_permutations)\n",
      "    return variable_importances - permutation_importances"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [],
     "prompt_number": 19
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "n_estimators = 100\n",
      "extra_trees = ExtraTreesClassifier(n_estimators, n_jobs=2, random_state=0)\n",
      "random_trees = ExtraTreesClassifier(n_estimators, max_features=1, n_jobs=2, random_state=0)\n",
      "\n",
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(random_trees.fit(X_orig, y), color='b', label='importance')\n",
      "plot_feature_importances(compute_permutation_importances(random_trees, X_orig, y), color='g', label='permutation')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7AAAADFCAYAAABtuh4tAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAYMqsJEEBM49AAAAAElFTkSuQmCC\n",
       "text": [
        "<matplotlib.figure.Figure at 0x10865fb50>"
       ]
      }
     ],
     "prompt_number": 20
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "adjusted_importances = compute_adjusted_importances(extra_trees, X_orig, y)\n",
      "plot_feature_importances(adjusted_importances, label='extra', color='b')\n",
      "adjusted_importances = compute_adjusted_importances(random_trees, X_orig, y)\n",
      "plot_feature_importances(adjusted_importances, label='random', color='g')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7gAAADFCAYAAAB+bV7ZAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAAAAgJjw/wFhzzABzSuTygAAAABJRU5ErkJggg==\n",
       "text": [
        "<matplotlib.figure.Figure at 0x1086cb250>"
       ]
      }
     ],
     "prompt_number": 21
    },
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "This does not work and is a bit to be expected, especially for very randomized trees. Using a larger number of trees does not seem to help in any significant way."
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "def compute_permutation_importances2(ensemble, X, y, n_permutations=1):\n",
      "    all_importances = []\n",
      "    n_features = X.shape[1]\n",
      "    for i in range(n_permutations):\n",
      "        ensemble.fit(np.hstack([X, shuffle_columns(X)]), y)\n",
      "        all_importances.append(compute_importances(ensemble))   \n",
      "    all_importances = sum(all_importances) / len(all_importances)\n",
      "    return all_importances[:n_features], all_importances[n_features:]\n",
      "\n",
      "\n",
      "def compute_adjusted_importances2(ensemble, X, y, n_permutations=1):\n",
      "    vi, pi = compute_permutation_importances2()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [],
     "prompt_number": 22
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "vi_random, pi_random = compute_permutation_importances2(random_trees, X_orig, y)\n",
      "adjusted_random = vi_random - pi_random\n",
      "\n",
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(vi_random, color='b', label='importance')\n",
      "plot_feature_importances(pi_random, color='g', label='permutation')\n",
      "plt.title('Raw variable importances vs permutation importances on random trees')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7AAAADQCAYAAAA+oY0FAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
       "text": [
        "<matplotlib.figure.Figure at 0x103c6e4d0>"
       ]
      }
     ],
     "prompt_number": 23
    },
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "That looks like a better way to find the chance level. Let's plot the differences, we now plot the adjusted for chance variable importances to take into account the finiteness of our samples:"
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "vi_extra, pi_extra = compute_permutation_importances2(extra_trees, X_orig, y)\n",
      "adjusted_extra = vi_extra - pi_extra"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [],
     "prompt_number": 24
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(adjusted_extra, color='b', label='extra')\n",
      "plot_feature_importances(adjusted_random, color='g', label='random')\n",
      "plt.legend()\n",
      "_ = plt.title('Variable importances adjusted against feature permutations')"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7cAAADQCAYAAADcfZZ8AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nRERERu//A7WQ+n6cJSZqAAAAAElFTkSuQmCC\n",
       "text": [
        "<matplotlib.figure.Figure at 0x1086a2910>"
       ]
      }
     ],
     "prompt_number": 25
    },
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "Let's evaluate this scheme on a dataset with normally distributed noisy variables:"
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "vi_extra_noise2, pi_extra_noise2 = compute_permutation_importances2(extra_trees, X_noise_2, y)\n",
      "adjusted_extra_noise2 = vi_extra_noise2 - pi_extra_noise2\n",
      "\n",
      "vi_random_noise2, pi_random_noise2 = compute_permutation_importances2(random_trees, X_noise_2, y)\n",
      "adjusted_random_noise2 = vi_random_noise2 - pi_random_noise2\n",
      "\n",
      "plot_feature_importances(adjusted_extra_noise2, color='b', label='extra')\n",
      "plot_feature_importances(adjusted_random_noise2, color='g', label='random')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7oAAADFCAYAAAB6mI7kAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nH6D3VrkyonnRAAAAAElFTkSuQmCC\n",
       "text": [
        "<matplotlib.figure.Figure at 0x106a682d0>"
       ]
      }
     ],
     "prompt_number": 26
    },
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "We can see that this scheme of adjusting the variable importance is actually working as expected. Let's now zoom in on the remaining variable importances to check which of the extra or random trees perform best at assigning zero values to noisy variables:"
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "n_features = X_orig.shape[1]\n",
      "adjusted_extra_noisy_part = adjusted_extra_noise2[n_features:]\n",
      "adjusted_random_noisy_part = adjusted_random_noise2[n_features:]\n",
      "\n",
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(adjusted_extra_noisy_part, color='b', label='extra')\n",
      "plot_feature_importances(adjusted_random_noisy_part, color='g', label='random')\n",
      "plt.title('Zoom on the AVI of noisy features')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA8EAAADQCAYAAAAnKmOjAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nQYMgGAAAAAAQNAiCAQAAAABB4/8BCQyQZPX3XL4AAAAASUVORK5CYII=\n",
       "text": [
        "<matplotlib.figure.Figure at 0x107c32e10>"
       ]
      }
     ],
     "prompt_number": 27
    },
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "Qualitatively there does not seem to be a clear winner. Let's quantify:"
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "np.mean(adjusted_extra_noisy_part), np.std(adjusted_extra_noisy_part)"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "pyout",
       "prompt_number": 28,
       "text": [
        "(-4.4719599020202392e-06, 0.00014378502634102241)"
       ]
      }
     ],
     "prompt_number": 28
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "np.mean(adjusted_random_noisy_part), np.std(adjusted_random_noisy_part)"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "pyout",
       "prompt_number": 29,
       "text": [
        "(2.0340691632104051e-05, 0.00018497496806577288)"
       ]
      }
     ],
     "prompt_number": 29
    },
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "The noise level seems to be the same and approximitalely centered on zero as expected. Let's evaluate how much the addition of extra noisy features impacts the values of the adjusted variable importances for the original features part."
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "adjusted_extra_orig_part = adjusted_extra_noise2[:n_features]\n",
      "adjusted_random_orig_part = adjusted_random_noise2[:n_features]"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [],
     "prompt_number": 30
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(adjusted_extra, color='b', label='AVI on original data')\n",
      "plot_feature_importances(adjusted_extra_orig_part, color='g', label='with extra noisy features')\n",
      "plt.title('Extra Trees')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7cAAADPCAYAAAAu/SYyAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\n",
       "text": [
        "<matplotlib.figure.Figure at 0x108381790>"
       ]
      }
     ],
     "prompt_number": 31
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(adjusted_random, color='b', label='AVI on original data')\n",
      "plot_feature_importances(adjusted_random_orig_part, color='g', label='with extra noisy features')\n",
      "plt.title('Random Trees')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7AAAADQCAYAAAA+oY0FAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz\nAAALEgAACxIB0t1+/AAAIABJREFUeJzt3XtcVNXC//HvIFhKICAKwoCokEKm0fHSxZLSNDFRMw1L\nwsQyn7x28VYd0XoSu5xTZqesk6JWZnUqSYG8YlkBp/KSZYkpilw0LyiYeRnm+aOf85OUYSBGZpjP\n+/XiJTN7rT1rz2KP891r7b0NZrPZLAAAAAAAHJxbfTcAAAAAAABbEGABAAAAAE6BAAsAAAAAcAoE\nWAAAAACAUyDAAgAAAACcAgEWAAAAAOAUCLAAANSx5ORkJSQk1HczAABocAiwAACXEBYWpqZNm8rL\ny0uBgYFKSEjQ8ePH7fJaBoPBLus93zvvvCMvLy95eXmpadOmcnNzszz29va2++sDAFAfCLAAAJdg\nMBi0cuVKlZWVaevWrfr+++/1zDPP1Hezau3ee+9VWVmZysrKlJGRoeDgYMvjPwfzioqKemolAAB1\niwALAHA5AQEB6tOnj3744QfLcykpKQoPD5e3t7euuuoqffLJJ5Zlqamp6tGjhx5//HH5+fmpbdu2\nyszMtCzfs2ePevbsKW9vb/Xp00eHDh2q9HppaWm66qqr5Ovrq1tuuUU//fSTZVlYWJheeOEFderU\nSV5eXkpKStKBAwfUr18/NWvWTLfddptKS0utbo/ZbK70eOTIkRo7dqxiY2N1xRVXKCsrS0VFRRoy\nZIhatmyptm3b6pVXXqlU/9z2+/v76+6779bRo0clSb///rtGjBghf39/+fr6qlu3bjp48GAN3m0A\nAOoOARYA4DLOBb39+/crMzNT3bt3tywLDw/Xpk2bdPz4cc2cOVMjRozQgQMHLMtzc3PVoUMHHT58\nWFOmTFFSUpJl2T333KOuXbvq8OHDeuqpp7R48WLLNOKdO3fqnnvu0bx583To0CHFxsZqwIABOnv2\nrKQ/RoY/+ugjrVu3Tj///LNWrlypfv36KSUlRQcPHlRFRYXmzZtX421dtmyZnnrqKZWXl+v666/X\ngAEDFB0draKiIq1bt04vvfSSVq9eLUmaN2+e0tLS9Pnnn6u4uFi+vr56+OGHJUmLFy/W8ePHtX//\nfh05ckQLFixQkyZNatweAADqAgEWAOASzGazBg0aJG9vb4WGhqpdu3Z68sknLcvvuusuBQYGSpKG\nDRumiIgI5eTkWJa3bt1aSUlJMhgMuu+++1RcXKyDBw9q3759+uabb/T000/Lw8NDN910kwYMGGCp\nt3z5ct1xxx3q1auXGjVqpMcee0wnT57UV199ZSkzfvx4tWjRQkFBQbrpppt0/fXXq3Pnzrrssss0\nePBgbd68uUbbajAYNGjQIF1//fWSpG3btunQoUN68skn5e7urjZt2mj06NF67733JEmvv/66nnnm\nGQUFBcnDw0MzZ87Uhx9+KJPJpMaNG+vw4cPKy8uTwWBQdHS0vLy8at4BAADUAQIsAMAlGAwGrVix\nQsePH1dWVpbWr1+vb775xrJ8yZIlio6Olq+vr3x9fbV9+3YdPnzYsvxcuJWkpk2bSpLKy8tVVFQk\nX1/fSqOSrVu3tvxeVFSk0NDQSu0ICQlRYWGh5bmAgADL702aNKn0+PLLL1d5eXmNt9doNFp+37t3\nr6Wd537mzJljmQq8d+9eDR482LIsKipK7u7uOnjwoBISEtS3b1/Fx8crODhYU6dOtYweAwBwqRFg\nAQAu5+abb9b48eM1depUSX8EuAcffFCvvvqqjhw5oqNHj6pjx44XnFt6Ma1atdLRo0f122+/WZ7b\nu3ev5ffg4OBKj81mswoKChQcHFzlOm153eqcfyXk0NBQtWnTRkePHrX8HD9+XCtXrrQsz8zMrLT8\nt99+U6tWreTu7q6///3v+uGHH/TVV19p5cqVWrJkyV9uHwAAtUGABQC4pEmTJik3N1c5OTk6ceKE\nDAaD/P39VVFRoUWLFmn79u02rad169bq0qWLZs6cqTNnzmjTpk2WYChJQ4cO1apVq7R+/XqdOXNG\nL774oi6//HLdcMMN9tq0CwJwt27d5OXlpeeee04nT56UyWTS9u3bLSPQDz30kGbMmKF9+/ZJkn79\n9VelpaVJkrKysvT999/LZDLJy8tLHh4eatSokd3aDgCANQRYAIBL8vf3V2JioubOnauoqCg9+uij\nuv766xUYGKjt27erR48elrIGg+GCe7ue//jdd99VTk6O/Pz8NHv2bCUmJlqWtW/fXm+//bblPNdV\nq1bp008/lbu7e5VtO3/dF3vtmtZxc3PTypUrtWXLFrVt21YtWrTQgw8+aLndzsSJExUXF6c+ffrI\n29tb119/vXJzcyVJJSUlGjp0qJo1a6aoqCjFxMQoISGh2vYAAGAPBnNdzFMCAAAAAMDOGIEFAAAA\nADgFAiwAAAAAwCkQYAEAAAAATqHqK0g4AFsuWgEAAAAAcF41uSyTw4/Ams1mflzwZ+bMmfXeBn7o\nf37oe37of37oe37of37s2/c15fABFgAAAAAAiQALAAAAAHASBFg4pJiYmPpuAuoR/e+66HvXRv+7\nLvretdH/rqs2fW8wm822nzF7iRkMBjlw8wAAAAAAf0FNM59DX4UYAAAAcHZ+fn46evRofTcDqFe+\nvr46cuTIX14PI7AAAACAHfGdFqh6P6jp/sE5sAAAAAAAp0CABQAAAAA4BQIsAAAAAMApcBEnAADg\nMqZNm6uSkpM2lQ0MbKKUlKl2bhEAoCYIsAAAwGWUlJxUWFiyTWXz820rB8AxxcbGavjw4UpISKjT\nstZkZWUpISFBBQUFNpWPiYlRQkKCkpKS/tLruhICLAAAAHCJ1WQ2QG3UZgZBTEyMtm3bppKSEjVu\n3FjZ2dnq3bu3Dhw4IE9Pz0plo6Oj9cADDyg2NlZt27bV2bNn5ebmWGcnpqen26VsXTIYDDIYDDaV\nDQsL08KFC3XrrbfauVWOrdoAm5mZqUmTJslkMmn06NGaOvXCHWHChAnKyMhQ06ZNlZqaqujoaKt1\nc3NzNW7cOJ05c0bu7u7617/+pa5du9bxpgEAAACOqSazAWqjpjMI8vPzlZubq9DQUKWlpemuu+7S\nddddJ6PRqA8//FCJiYmWstu3b9eOHTs0fPhwHTt2rI5b/teduyWLrcHQWXA7pj9YPUxiMpk0btw4\nZWZm6scff9SyZcu0Y8eOSmXS09O1a9cu5eXl6Y033tDYsWOrrTtlyhQ9/fTT2rx5s2bPnq0pU6bY\nafMAAAAAVGfJkiXq3bu3EhIStHjxYsvziYmJWrJkyQVl+/fvL19f32rXW1RUpLi4ODVv3lwRERH6\n97//bVmWnJysYcOGKTExUd7e3urYsaO+/fbbKtf11VdfqWvXrvLx8VG3bt309ddfW5bFxMToySef\n1I033qgrrrhCu3fvVkxMjN566y1Jf2STRx99VC1atFDbtm01f/58ubm5qaKiwlL/XNnU1FT16NFD\njz/+uPz8/NS2bVtlZmZaXmvRokWKioqSt7e32rVrpzfeeKPa9+GcNWvWqEOHDvLx8dH48eNlNpst\nofSXX37RrbfeKn9/f7Vo0UIjRoywHCBISEjQvn37NGDAAHl5eemFF16QJA0dOlStWrWSj4+Pevbs\nqR9//NHmtjgrqwE2NzdX4eHhCgsLk4eHh+Lj47VixYpKZdLS0ixHZLp3767S0lKVlJRYrduqVStL\nZ5SWlio4ONge2wYAAADABkuWLNHdd9+tYcOG6bPPPtPBgwclSSNGjNDnn3+u/fv3S5IqKiq0bNmy\nSiOy1sTHxys0NFTFxcX68MMPNWPGDG3YsMGy/NNPP7WM5MbFxWncuHEXXc+RI0fUv39/TZo0SUeO\nHNEjjzyi/v376+jRo5Yyb7/9tv7973+rrKxMrVu3rjQ9980331RmZqa2bt2q7777Tp988kmlEdo/\nT+XNzc1Vhw4ddPjwYU2ZMqXSOaoBAQFatWqVjh8/rkWLFmny5MnavHlzte/FoUOHNGTIED377LM6\nfPiw2rVrpy+//LLS6z7xxBMqLi7Wjh07VFBQoOTkZEnS0qVLFRoaqpUrV6qsrEyPPfaYJKl///7a\ntWuXfv31V1177bW69957q22Hs7MaYAsLCxUSEmJ5bDQaVVhYaFOZoqKiKuumpKTo0UcfVWhoqB5/\n/HHNmTOnyjYkJydbfrKysmq0cQAAAACs27RpkwoLCxUXF6eIiAhFRUXp3XfflSSFhIQoJiZGS5cu\nlSStW7dOp06dUv/+/atdb0FBgb766ivNnTtXjRs3VufOnTV69OhKI7o33XSTbr/9dhkMBo0YMUJb\nt2696LpWrVql9u3b695775Wbm5vi4+PVoUMHpaWlSfojgI4cOVKRkZFyc3OTu3vlMyXff/99TZo0\nSUFBQfLx8dH06dOtTsdt3bq1kpKSZDAYdN9996m4uNgS6mNjY9WmTRtJ0s0336w+ffroiy++qPb9\nSE9PV8eOHXXnnXeqUaNGmjRpkgIDAy3L27Vrp169esnDw0P+/v6aPHmyNm7caHWdI0eOlKenpzw8\nPDRz5kxt3bpVZWVl1balPmVlZVXKeDVl9RxYW+eN13QudlJSkubNm6fBgwfrgw8+0KhRo7RmzZqL\nlq3NRgEAAACwzeLFi9WnTx95eXlJ+mNa6uLFizVp0iRJf0wjfvbZZzV9+nQtXbpUw4cPV6NGjapd\nb1FRkfz8/CpdACo0NFTffPON5XFAQIDl96ZNm+r3339XRUXFBReEKioqUmhoaKXnWrduraKiIsvj\n8wfP/qy4uPiCwTVrzg+WTZs2lSSVl5erZcuWysjI0KxZs5SXl6eKigr99ttv6tSpk9X1nduGP7/u\n+W06cOCAJk6cqE2bNqmsrEwVFRXy8/Orcn0VFRWaMWOGPvzwQ/36669yc3OTwWDQoUOHLH3piGJi\nYhQTE2N5PGvWrBrVtzoCGxwcXOkS0AUFBRe86X8us3//fhmNRqt1c3NzNXjwYEnSXXfdpdzc3Bo1\nGgAAAMBfd/LkSb3//vtav369WrVqpVatWunFF1/U1q1btW3bNknS4MGDtX//fm3YsEEff/yxzdOH\ng4KCdOTIEZWXl1ue27dvX7Xh8WKCg4O1d+/eSs/t3bu30qmI1gbfWrVqdUE2qY1Tp05pyJAhmjJl\nig4ePKijR48qNjbWpgG9oKCgSq9rNpsrPZ4xY4YaNWqk7du369ixY1q6dKnlHF3pwu175513lJaW\npnXr1unYsWPas2dPpXNqGyqrAbZLly7Ky8tTfn6+Tp8+reXLlysuLq5Smbi4OMs0gOzsbPn4+Cgg\nIMBq3fDwcMtw+Pr163XllVfaY9sAAAAAWPHJJ5/I3d1dO3bs0NatW7V161bt2LFDN910k+U7vqen\np+666y7df//9CgsL07XXXmvTukNCQnTDDTdo+vTpOnXqlLZt26aFCxdqxIgRNW5nbGysdu7cqWXL\nluns2bNavny5fvrpJ91xxx2WMtaC27Bhw/Tyyy+rqKhIpaWlmjt3bq2uUnz69GmdPn1a/v7+cnNz\nU0ZGhlavXm1T3f79++uHH37Qxx9/rLNnz2revHkqKSmxLC8vL5enp6e8vb1VWFio559/vlL9gIAA\n/fLLL5XKX3bZZfLz89OJEyc0Y8aMGm+PM7I6hdjd3V3z589X3759ZTKZlJSUpMjISC1YsECSNGbM\nGMXGxio9PV3h4eHy9PTUokWLrNaVpDfeeEMPP/ywTp06pSZNmtToyl0AAACAswsMbFLjW93UdP22\nWLJkiUaNGnXBqOi4ceM0ceJEPffcc3Jzc1NiYqJSU1M1d+7cC9ZhLQguW7ZMDz30kIKCguTr66vZ\ns2db7mN6sXugVrUuPz8/rVy5UhMnTtTYsWMVERGhlStXVppia60dDzzwgHbu3KlOnTqpWbNmGj9+\nvDZu3HjRe9daa5eXl5fmzZunYcOG6dSpUxowYIAGDhxo0zY0b95cH3zwgSZMmKD7779fCQkJ6tGj\nh2X5zJkzdd9996lZs2aKiIjQiBEj9NJLL1mWT58+XePHj9eUKVP01FNPacyYMfrss88UHBys5s2b\na/bs2Zac1pAZzA48xsy9jgAAQF0aOTLZ5ntv5ucnKzXVtrKANXyndTwZGRkaO3as8vPz67spLqOq\n/aCm+4fVKcQAAAAA4Ox+//13paen6+zZsyosLNSsWbN055131nezUAsEWAAAAAANmtlsVnJysvz8\n/HTttdfqqquu0uzZs+u7WagFq+fAAgAAAICza9KkCXc+aSAYgQUAAAAAOAUCLAAAAADAKRBgAQAA\nAABOgQALAAAAAHAKBFgAAAAAgFMgwAIAAAColpeXl/Lz86tcHhYWpnXr1l26BjmAffv2ycvLS2az\nuU7X++STT6pFixYKCgqq0/U2BNxGBwAAALjEpiVPU0lpid3WH+gTqJTklDpdZ1lZmeX3kSNHKiQk\nRE8//bTlOYPBIIPBUKev+Wf5+flq27atzp49Kze3+h+LCw0NrfS+1IV9+/bpH//4hwoKCtS8efO/\ntK6srCwlJCSooKCgjlpX/wiwAAAAwCVWUlqisEFhdlt//if5dlu3I7A24mkymdSoUaNL2Jq6tW/f\nPjVv3vwvh9e6cPbsWbm7O1ZkrP/DFgAAAADqxaJFixQXF2d5HBERoWHDhlkeh4SEaNu2bZIkNzc3\n/fLLL3rjjTf07rvv6rnnnpOXl5cGDhxoKb9582Z17txZPj4+io+P16lTp6p87YULFyoqKkp+fn66\n/fbbtW/fPknS3Llzdd1118lkMkmSXnvtNXXs2FGnTp3SzTffLEny8fGRt7e3srOzlZqaqhtvvFGP\nPPKI/P39NWvWLO3evVu33nqr/P391aJFC40YMULHjh2rsi1ubm5asGCBrrzySvn6+mrcuHGWZWaz\nWc8884zCwsIUEBCgxMREHT9+XNIfI8Jubm6qqKiQJKWmpqpdu3by9vZW27ZttWzZMp0+fVp+fn7a\nvn27ZZ0HDx6Up6enDh8+XKkda9euVZ8+fVRUVCQvLy+NGjVKkpSdna0bbrhBvr6+uuaaa7Rx48ZK\nfRgVFSVvb2+1a9dOb7zxhiTpxIkT6tevn2Vd3t7eKi4u1siRI/XUU09Z6mdlZSkkJMTyOCwsTM89\n95w6deokLy8vVVRUWH39P2/zu+++W+X7XBcIsAAAAICLiomJ0RdffCFJKioq0pkzZ5SdnS1J2r17\nt06cOKFOnTpZyhsMBj344IO69957NXXqVJWVlWnFihWS/gh6H3zwgT777DPt2bNH27ZtU2pq6kVf\nd8WKFZozZ44+/vhjHTp0SDfddJOGDx8uSZoyZYouu+wyPfPMM8rLy9MTTzyhd955R5dddpmlrceO\nHdPx48d13XXXSZJyc3PVrl07HTx4UDNmzJDZbNYTTzyh4uJi7dixQwUFBUpOTrb6XqxatUrffPON\ntm3bpvfff1+fffaZpD8C4uLFi5WVlaXdu3ervLy8UsA958SJE5o4caIyMzN1/Phxff311+rcubMa\nN26s4cOH6+2337aUXbZsmXr37n3BKGvv3r2VkZGhoKAglZWVaeHChSosLNQdd9yhv//97zp69Khe\neOEFDRkyxBJ+AwICtGrVKh0/flyLFi3S5MmTtXnzZnl6eiozM9OyruPHj6tVq1Y2TfV+7733lJGR\nodLSUhUXF1f5+hfb5muuucbquv8qAiwAAADgotq0aSMvLy9t3rxZn3/+ufr27augoCD9/PPP2rhx\no2XE82L+PI3XYDBowoQJCgwMlK+vrwYMGKAtW7ZctO7rr7+u6dOnq3379nJzc9P06dO1ZcsWFRQU\nyGAwaMmSJZo3b54GDhyoqVOnqnPnzhd9zXOCgoL08MMPy83NTZdffrnatWunXr16ycPDQ/7+/po8\neXKlUcOLmTZtmry9vRUSEqJbbrlFW7dulSS98847evTRRxUWFiZPT0/NmTNH7733nmXU9Xxubm76\n/vvvdfLkSQUEBCgqKkqSdN9992nZsmWWckuXLlVCQoJN7+vbb7+t2NhY3X777ZL+CLldunTRqlWr\nJEmxsbFq06aNJOnmm29Wnz59LEG/qvfL2hTsc/0YHBysyy67zOrrGwyGKrfZXgiwAAAAgAvr2bOn\nsrKy9MUXX6hnz57q2bOnNm7cqM8//1w9e/as0boCAwMtvzdp0kTl5eUXLbd3715NnDhRvr6+8vX1\ntYxEFhYWSpJat26tmJgY7d27Vw8//HC1r3v+FFhJOnDggOLj42U0GtWsWTMlJCRcMF3XWtubNm1q\naXtxcbFat25tWRYaGqqzZ8/qwIEDlep7enpq+fLlev311xUUFKQ77rhDP//8sySpe/fuatKkibKy\nsvTTTz/pl19+qTR125q9e/fqgw8+sLxXvr6++vLLL1VS8sdFwDIyMnTdddepefPm8vX1VXp6erXb\nWp3z309rr9+0adMqt9leCLAAAACAC+vZs6c2bNigL774QjExMZZAu3HjxioDrC1XG7ZWJjQ0VG+8\n8YaOHj1q+Tlx4oRlSvCqVauUnZ2tXr166bHHHqt2nX9+fsaMGWrUqJG2b9+uY8eOaenSpRcdMbVF\nUFBQpdsH7du3T+7u7goICLigbJ8+fbR69WqVlJSoQ4cOeuCBByzLEhMT9fbbb2vp0qUaOnSoGjdu\nbNPrh4aGKiEhodJ7VVZWpilTpujUqVMaMmSIpkyZooMHD+ro0aOKjY21jLBe7P3y9PTUb7/9Znl8\nLgif7/x61l6/um22B8e6pBQAwKVNmzZXJSUnbSobGNhEKSlT7dwiAGj4evbsqcmTJ6tVq1YKCgrS\nFVdcoREjRqiiokLR0dEXrRMQEKDdu3dbXa+1aaoPPfSQnnrqKXXu3FlRUVE6duyYVq9eraFDh+rQ\noUN64IEHtHDhQnXr1k1XX321Bg4cqH79+qlFixaWi0lFRERUuf7y8nI1a9ZM3t7eKiws1PPPP2/b\nm3Fe28+1f/jw4Zo7d6769esnf39/zZgxQ/Hx8RfcxufgwYP6+uuv1bt3bzVp0kSenp6VroY8YsQI\nde7cWd7e3pXOh63OiBEj1LVrV61evVq9evWynKccEREhb29vnT59Wv7+/nJzc1NGRoZWr16tq6++\nWtIf/XT48GEdP35c3t7ekqRrrrlGL774op588kmdOnVKL730Uq1f38PDw+o22wMBFgDgMEpKTios\nLNmmsvn5tpUDAEcU6BNo11vdBPoEVl/o/4mIiJCXl5duuukmSbJczbZly5aVRuLO/z0pKUlDhw6V\nr6+vbrnlFn300UcXrNfaxYIGDRqk8vJyxcfHa+/evWrWrJn69OmjoUOHasyYMRo0aJDlnMu33npL\nSUlJ2r59u3x9ffXEE0/oxhtv1NmzZ5WRkXHR15k5c6buu+8+NWvWTBERERoxYoTVoPbn+uevc9So\nUSoqKtLNN9+s33//XbfffrteeeWVC+pWVFTon//8pxITE2UwGBQdHa3XXnvNUi4kJETXXnutdu/e\nrR49elTZlj+3x2g0asWKFZoyZYqGDx+uRo0aqXv37nrttdfk5eWlefPmadiwYTp16pQGDBhQ6arQ\nHTp00PDhw9W2bVtVVFToxx9/VEJCgtauXauwsDC1adNGI0eO1D/+8Y8q22Lt9avbZnswmK0dGqln\nBoPB6pEbAEDDMnJkco0CbGqqbWWBc/gbQ33gOy3OSUpKUnBwsGbPnl3fTbnkqtoParp/MAILoEGw\ndeop004BAEB9yM/P10cffVTllZlhGwIsgAbB1qmnDXHaKeeNAoDjqMlnMlzHU089pZdeekkzZsyo\ndEVj1BwBFgCcHOeNAoDjuPhn8qz6aAocyNNPP62nn366vpvRIHAbHQAAAACAUyDAAgAAAACcQrUB\nNjMzUx06dFBERITmzp170TITJkxQRESEOnfurM2bN9tU95VXXlFkZKQ6duyoqVM5HwsAAAAAYJ3V\nc2BNJpPGjRuntWvXKjg4WF27dlVcXJwiIyMtZdLT07Vr1y7l5eUpJydHY8eOVXZ2ttW6GzZsUFpa\nmrZt2yYPDw/9+uuvdt9QAAAAoD54evpWeT9UwFX4+vrWyXqsBtjc3FyFh4crLCxMkhQfH68VK1ZU\nCrBpaWlKTEyUJHXv3l2lpaUqKSnRnj17qqz72muvafr06fLw8JAktWjRok42BgBgG247BNiO/cX+\nGvrV1B977MhFn+dew0DNWQ2whYWFCgkJsTw2Go3KycmptkxhYaGKioqqrJuXl6fPP/9cM2bM0OWX\nX64XXnhBXbp0qZMNAgBUz5VvOwTUFPuL/XE1dQC2shpgbZ3qYDaba/SiZ8+e1dGjR5Wdna3//ve/\nGjZsmHbv3n3RssnJyZbfY2JiFBMTU6PXAgAAAAA4hqysLGVlZdW6vtUAGxwcrIKCAsvjgoICGY1G\nq2X2798vo9GoM2fOVFnXaDTqzjvvlCR17dpVbm5uOnz4sJo3b35BG84PsAAAAAAA5/XnQclZs2p2\nn2SrVyHu0qWL8vLylJ+fr9OnT2v58uWKi4urVCYuLk5LliyRJGVnZ8vHx0cBAQFW6w4aNEjr16+X\nJO3cuVOnT5++aHgFAAAAAOAcqyOw7u7umj9/vvr27SuTyaSkpCRFRkZqwYIFkqQxY8YoNjZW6enp\nCg8Pl6enpxYtWmS1riSNGjVKo0aN0tVXX63GjRtbAjDgDLiYBwAAAFA/rAZYSerXr5/69etX6bkx\nY8ZUejx//nyb60qSh4eHli5dWpN2Ag6Di3kAAAAA9aPaAAsAlxqj3AAAALgYAiwAh8MoNwAAAC7G\n6kWcAAAAAABwFARYAAAAAIBTYAoxALvifFbAdo66v9jaLol9GQBgXwRYAHbF+ayA7Rx1f7G1XRL7\nMgDAvphCDAAAAABwCgRYAAAAAIBTIMACAAAAAJwCARYAAAAA4BQIsAAAAAAAp0CABQAAAAA4BQIs\nAAAAAMApEGABAAAAAE7Bvb4bAACAM5g2ba5KSk5WWy4wsIlSUqZeghYBAOB6CLAAANigpOSkwsKS\nqy2Xn1/1nsASAAATGklEQVR9GQAAUDsEWAAAACdk66wAiZkBABoOAiwAAIATsnVWgMTMAAANBxdx\nAgAAAAA4BQIsAAAAAMApEGABAAAAAE6Bc2ABAADqGLddAgD7IMACAODECEqOidsuAYB9EGDhkPhC\nBlfmqH//tWmXo25LQ0JQAuCK+P/FdRFg4ZD4QgZX5qh//7Vpl6NuCwDAufH/i+uqNsBmZmZq0qRJ\nMplMGj16tKZOvfAIxoQJE5SRkaGmTZsqNTVV0dHRNtV98cUX9fjjj+vQoUPy8/Oro00CANfy7Q9r\ntSU/36ayphO7JCXbszkAAAB2YzXAmkwmjRs3TmvXrlVwcLC6du2quLg4RUZGWsqkp6dr165dysvL\nU05OjsaOHavs7Oxq6xYUFGjNmjVq3bq1fbfQSdk6LUJiagTg6k6ay2WMCbOp7P6VW+zbGFjwOQ4A\nQN2zGmBzc3MVHh6usLAwSVJ8fLxWrFhRKcCmpaUpMTFRktS9e3eVlpaqpKREe/bssVr3kUce0XPP\nPaeBAwfaYbOcn63TIiSmRgCAI+JzHACAumc1wBYWFiokJMTy2Gg0Kicnp9oyhYWFKioqqrLuihUr\nZDQa1alTp2obmJycbPk9JiZGMTEx1dYBAAAAADierKwsZWVl1bq+1QBrMBhsWonZbLb5BU+ePKln\nn31Wa9assan++QEWAAAAAOC8/jwoOWvWrBrVtxpgg4ODVVBQYHlcUFAgo9Fotcz+/ftlNBp15syZ\ni9b95ZdflJ+fr86dO1vK/+1vf1Nubq5atmxZo8YDAAAAQHW4LkHDYTXAdunSRXl5ecrPz1dQUJCW\nL1+uZcuWVSoTFxen+fPnKz4+XtnZ2fLx8VFAQICaN29+0bqRkZE6cOCApX6bNm307bffchViAAAA\nOBzuN9owcF2ChsNqgHV3d9f8+fPVt29fmUwmJSUlKTIyUgsWLJAkjRkzRrGxsUpPT1d4eLg8PT21\naNEiq3X/zNZpygBgja23kuE2MgAcFUHJMXG/UcCxVHsf2H79+qlfv36VnhszZkylx/Pnz7e57p/t\n3r27uiYAQLVsvZXMudvI8EURgKMhKAFA9aoNsADQEPFFEWgYOBjluuh7wDURYAEAgNPiYJTrou8B\n10SABWAzjnYDAACgPhFgAdiMo90AAACoT2713QAAAAAAAGzh8iOwTIkEAAAAAOfg8gGWKZEAAFfD\nwVsAgLNy+QALuDK+xAKuiYO3AABnRYAFXBhfYgEAQFVsPdAtcbAblw4BFgAAAMAFbD3QLXGwG5cO\nARZ2x9E7AAAAAHWBAAu74+gdAABwBFz7wf54j2FvBFgAAAC4BK79YH+8x7A3t/puAAAAAAAAtmAE\nFgAAAKgj3/6wVlvy820qazqxS1KyPZsDNDgEWAAAAKCOnDSXyxgTZlPZ/Su32LcxQAPEFGIAAAAA\ngFNgBLYB4apvAJwdU+8AAIA1BNgGhKu+AXB2TL2DvXGQBACcGwEWAAC4DA6SAIBzI8ACAACrGLUE\n4Oz4HGs4CLAAAMAqRi0BODs+xxoOAiwAAIAVto7cMGoDAPZHgAUAALDC1pEbRm0AwP5sCrCZmZma\nNGmSTCaTRo8eralTL7wFy4QJE5SRkaGmTZsqNTVV0dHRVus+/vjjWrlypRo3bqx27dpp0aJFatas\nWR1umm04qurauPUQAMBZcU4fAFdUbYA1mUwaN26c1q5dq+DgYHXt2lVxcXGKjIy0lElPT9euXbuU\nl5ennJwcjR07VtnZ2Vbr9unTR3PnzpWbm5umTZumOXPmKCUlxa4bezEcVXVt3HoIAOCsXP2cPgYh\nANdUbYDNzc1VeHi4wsLCJEnx8fFasWJFpQCblpamxMRESVL37t1VWlqqkpIS7dmzp8q6t912m6V+\n9+7d9Z///KcONwsAAAANGYMQro0DGK6r2gBbWFiokJAQy2Oj0aicnJxqyxQWFqqoqKjaupK0cOFC\nDR8+vFYbgIaJD6WGw1H70lHbBaBm2JcB18QBDNdVbYA1GAw2rchsNteqAf/7v/+rxo0b65577rno\n8uTkZMvvMTExiomJqXJdtp7PKDXMcxod9T/x2pyj05A+lFz9PFtH7UtHbRccl6N+xro69mUAcC5Z\nWVnKysqqdf1qA2xwcLAKCgosjwsKCmQ0Gq2W2b9/v4xGo86cOWO1bmpqqtLT07Vu3boqX//8AFsd\nW89nlBrmOY2O+p+4q5+jw3m2QMNQ089YLrAD2I79BXAdfx6UnDVrVo3qVxtgu3Tpory8POXn5yso\nKEjLly/XsmXLKpWJi4vT/PnzFR8fr+zsbPn4+CggIEDNmzevsm5mZqaef/55bdy4UZdffnmNGg0A\ngKNz9YN3QE2wvwCwVbUB1t3dXfPnz1ffvn1lMpmUlJSkyMhILViwQJI0ZswYxcbGKj09XeHh4fL0\n9NSiRYus1pWk8ePH6/Tp05aLOV1//fX617/+Za/tBAAAuGSYcg4A9mHTfWD79eunfv36VXpuzJgx\nlR7Pnz/f5rqSlJeXZ2sbAQBOii/xcFWOeloPADg7mwIsAAC1wZd4AHBel+rcZEe94KWjtsvVEWBr\ngT9mwL4YtQMAoP5dqnOTHfWCl47aLldHgK0F/phdG+HK/hi1sz/+jgEAgDMiwAI1RLhCQ8DfMQDY\nhgN+gGMhwKLBYGo3YF98ibM/3mPA8XDAD3AsBFg0GEztBuyLL3H2V5v3mNALAHAlBNhLhNFBOCK+\n+ALOjwMLgO34fw9wfgTYS4TRQTgivvgCAFwJ/+8Bzo8AC8BmHLkGGgb2ZQCAsyLAOqhLdeNooCY4\ncg00DOzLAABnRYB1UJfqxtEAAAAA4Czc6rsBAAAAAADYghFYuDTOA4Mj4u8ScE3s+4BjYZ90TA0q\nwHLeKGqK88DgiPi7BFxTQ9r3uX0gasJRg2JD2icbkgYVYB35vFFH3TEBAADqGrcPRE0QFFETDSrA\nXiq1CaPsmAAAALiYSzVizcg4GgICbC0QRh0To9wAAMAZXaoR61XrPlUjz/Bqy5l+2KUUEWDhmAiw\naDA4sAAAAFA1viuhISDAAnbGyDAAAABQNwiwgJ1xtBMA4Go4eFszDen9akjbAsdEgAUAAECd4uBt\nzTSk96shbQscEwEWcEBcJRAAAAC4EAHWxU1LnqaS0pJqywX6BColOeUStAgS989zVBxYAAAAqF8E\nWBe3at1aNfrbFdWWM63brpRk+7cHcGQcWADg7DgQB8DZEWBd3MmTZ2X0iam23P6Tn9i/MQAAwK44\nEAfA2VUbYDMzMzVp0iSZTCaNHj1aU6deeDRuwoQJysjIUNOmTZWamqro6GirdY8cOaK7775be/fu\nVVhYmN5//335+PjU8aYBAABnwuig/XGFWADOzmqANZlMGjdunNauXavg4GB17dpVcXFxioyMtJRJ\nT0/Xrl27lJeXp5ycHI0dO1bZ2dlW66akpOi2227TlClTNHfuXKWkpCglhfMrAQBwZYwO2h9XiAXg\n7KwG2NzcXIWHhyssLEySFB8frxUrVlQKsGlpaUpMTJQkde/eXaWlpSopKdGePXuqrJuWlqaNGzdK\nkhITExUTE0OAdSIcIbc/jpA7ptr0C/uL/V13S4wOlZVWW87fy0fZG7Ls3yDUGp99gO24ECdcldUA\nW1hYqJCQEMtjo9GonJycassUFhaqqKioyroHDhxQQECAJCkgIEAHDhyosg3nArAk+fj4VDnVOCsr\nS/5ePtq/0rZzNf29fCz/2lLnXPlLVceRt2XTprUqLz9TbZ0rrvCQNNWht8WR+vL81/C8wl2Hyqo/\n+n1+nR69e6j8bHm1da5wv0Kb1m6qVdsc9T2uTZ1L1S813V9q07aGtI/VZltqIyYmxuayWVlZltej\nX6p3rk5t3uPa7GP0i/23pUeP22z+HNu0aU2tXod+qc33sU02/79/fn1H3JaG1C+oXlZWluVzvzYM\nZrPZXNXC//znP8rMzNSbb74pSXr77beVk5OjV155xVJmwIABmjZtmm688UZJUu/evTV37lzl5+dX\nqrt06VL997//1bx58+Tr66ujR49a1uHn56cjR45c2DiDQVaaB+A8HIkFANgDM0kA2FNNM5/VEdjg\n4GAVFBRYHhcUFMhoNFots3//fhmNRp05c+aC54ODgyX9MepaUlKiwMBAFRcXq2XLljY3GMDFEUoB\nAPZAKAXgSNysLezSpYvy8vKUn5+v06dPa/ny5YqLi6tUJi4uTkuWLJEkZWdny8fHRwEBAVbrxsXF\nafHixZKkxYsXa9CgQfbYNgAAAABAA2J1BNbd3V3z589X3759ZTKZlJSUpMjISC1YsECSNGbMGMXG\nxio9PV3h4eHy9PTUokWLrNaVpGnTpmnYsGF66623LLfRAQAAAADAGqvnwNY3zoEFAAAAgIarppnP\n6hRiAAAAAAAcBQEWAAAAAOAUCLAAAAAAAKdAgAUAAAAAOAUCLAAAAADAKRBgAQAAAABOgQALAAAA\nAHAKBFg4pKysrPpuAuoR/e+66HvXRv+7LvretdH/rqs2fU+AhUPig8y10f+ui753bfS/66LvXRv9\n77oIsAAAAACABosACwAAAABwCgaz2Wyu70ZUxWAw1HcTAAAAAAB2VJNI6m7HdvxlDpytAQAAAACX\nGFOIAQAAAABOgQALAAAAAHAKBFgAAAAAgFNwyACbmZmpDh06KCIiQnPnzq3v5sDORo0apYCAAF19\n9dWW544cOaLbbrtNV155pfr06aPS0tJ6bCHspaCgQLfccouuuuoqdezYUfPmzZNE/7uK33//Xd27\nd9c111yjqKgoTZ8+XRL970pMJpOio6M1YMAASfS9KwkLC1OnTp0UHR2tbt26SaL/XUVpaanuuusu\nRUZGKioqSjk5OfS9i/j5558VHR1t+WnWrJnmzZtX4/53uABrMpk0btw4ZWZm6scff9SyZcu0Y8eO\n+m4W7Oj+++9XZmZmpedSUlJ02223aefOnerVq5dSUlLqqXWwJw8PD/3zn//UDz/8oOzsbL366qva\nsWMH/e8iLr/8cm3YsEFbtmzRtm3btGHDBm3atIn+dyEvv/yyoqKiLHcdoO9dh8FgUFZWljZv3qzc\n3FxJ9L+rmDhxomJjY7Vjxw5t27ZNHTp0oO9dRPv27bV582Zt3rxZ3377rZo2barBgwfXvP/NDuar\nr74y9+3b1/J4zpw55jlz5tRji3Ap7Nmzx9yxY0fL4/bt25tLSkrMZrPZXFxcbG7fvn19NQ2X0MCB\nA81r1qyh/13QiRMnzF26dDFv376d/ncRBQUF5l69epnXr19vvuOOO8xmM5/9riQsLMx86NChSs/R\n/w1faWmpuU2bNhc8T9+7ns8++8zco0cPs9lc8/53uBHYwsJChYSEWB4bjUYVFhbWY4tQHw4cOKCA\ngABJUkBAgA4cOFDPLYK95efna/PmzerevTv970IqKip0zTXXKCAgwDKdnP53DZMnT9bzzz8vN7f/\n/1WEvncdBoNBvXv3VpcuXfTmm29Kov9dwZ49e9SiRQvdf//9uvbaa/XAAw/oxIkT9L0Leu+99zR8\n+HBJNd/3HS7AnptGBJxjMBj4u2jgysvLNWTIEL388svy8vKqtIz+b9jc3Ny0ZcsW7d+/X59//rk2\nbNhQaTn93zCtXLlSLVu2VHR0dJX3fKfvG7Yvv/xSmzdvVkZGhl599VV98cUXlZbT/w3T2bNn9d13\n3+l//ud/9N1338nT0/OC6aL0fcN3+vRpffrppxo6dOgFy2zpf4cLsMHBwSooKLA8LigokNForMcW\noT4EBASopKREklRcXKyWLVvWc4tgL2fOnNGQIUOUkJCgQYMGSaL/XVGzZs3Uv39/ffvtt/S/C/jq\nq6+UlpamNm3aaPjw4Vq/fr0SEhLoexfSqlUrSVKLFi00ePBg5ebm0v8uwGg0ymg0qmvXrpKku+66\nS999950CAwPpexeSkZGhv/3tb2rRooWkmn/vc7gA26VLF+Xl5Sk/P1+nT5/W8uXLFRcXV9/NwiUW\nFxenxYsXS5IWL15sCTZoWMxms5KSkhQVFaVJkyZZnqf/XcOhQ4csVxo8efKk1qxZo+joaPrfBTz7\n7LMqKCjQnj179N577+nWW2/V0qVL6XsX8dtvv6msrEySdOLECa1evVpXX301/e8CAgMDFRISop07\nd0qS1q5dq6uuukoDBgyg713IsmXLLNOHpZp/7zOYq5q7U48yMjI0adIkmUwmJSUlWW6tgIZp+PDh\n2rhxow4dOqSAgADNnj1bAwcO1LBhw7Rv3z6FhYXp/fffl4+PT303FXVs06ZNuvnmm9WpUyfLdJE5\nc+aoW7du9L8L+P7775WYmKiKigpVVFQoISFBjz/+uI4cOUL/u5CNGzfqxRdfVFpaGn3vIvbs2aPB\ngwdL+mNK6b333qvp06fT/y5i69atGj16tE6fPq127dpp0aJFMplM9L2LOHHihFq3bq09e/ZYThur\n6b7vkAEWAAAAAIA/c7gpxAAAAAAAXAwBFgAAAADgFAiwAAAAAACnQIAFAAAAADgFAiwAAAAAwCn8\nH0HY5LVwCqa/AAAAAElFTkSuQmCC\n",
       "text": [
        "<matplotlib.figure.Figure at 0x107c32ed0>"
       ]
      }
     ],
     "prompt_number": 32
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(adjusted_extra / adjusted_extra.sum(),\n",
      "                         color='b', label='AVI on original data')\n",
      "plot_feature_importances(adjusted_extra_orig_part / adjusted_extra_orig_part.sum(),\n",
      "                         color='g', label='with extra noisy features')\n",
      "plt.title('Extra Trees with normalization')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7EAAADQCAYAAADRY+Y7AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nYII=\n",
       "text": [
        "<matplotlib.figure.Figure at 0x1090cd950>"
       ]
      }
     ],
     "prompt_number": 86
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(adjusted_random / adjusted_random.sum(),\n",
      "                         color='b', label='AVI on original data')\n",
      "plot_feature_importances(adjusted_random_orig_part / adjusted_random_orig_part.sum(),\n",
      "                         color='g', label='with extra noisy features')\n",
      "plt.title('Random Trees with normalization')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7EAAADQCAYAAADRY+Y7AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz\nAAALEgAACxIB0t1+/AAAIABJREFUeJzt3XlclOX+//HXAJZCbG4Qi4JCiS1GoWa5kJULKlouYYJo\nmB5PbnXOcau+oi1qnU4b59uxzklSi8x+pahApYlLBjxyzbJcR1lEc8HEVHTg94df5ziKMDAiA/N+\nPh48HtxzX9d9f+65mGE+c133dRnKysrKEBEREREREakDnGo7ABERERERERFrKYkVERERERGROkNJ\nrIiIiIiIiNQZSmJFRERERESkzlASKyIiIiIiInWGklgRERERERGpM5TEiojIDZWYmEhcXFxth2G3\n3N3dMRqN19wfFBTE6tWrb1xANeTyv4ODBw/i7u7O9V71b/369bRp0+a6HlNERGqfklgRESEoKAhX\nV1fc3d3x9fUlLi6O33//vUbOZTAYauS4l/v4449xd3fH3d0dV1dXnJyczNseHh41fn5bnDp1iqCg\nIABGjBjBiy++aLHfYDDckOewpl1+DS1atODUqVM2X5eTkxP79u0zb3fp0oVffvnFpmOKiIj9URIr\nIiIYDAZWrFjBqVOn2LZtGz/++CMvv/xybYdVbcOGDePUqVOcOnWK9PR0/P39zdtXJuelpaW1FGXd\nYjKZruvxrneva00fV0RE7IeSWBERseDj40OPHj346aefzI/NmTOHkJAQPDw8uOOOO1i6dKl5X3Jy\nMp07d+Zvf/sbjRs3plWrVmRkZJj379+/n27duuHh4UGPHj04evSoxflSU1O544478Pb25qGHHrLo\nOQsKCuLvf/87d999N+7u7iQkJHD48GF69+6Np6cnjz76KEVFRRVez5VJzYgRIxg7dixRUVHccsst\nZGZmUlBQwMCBA2nevDmtWrXi3Xfftah/6fqbNm3KE088wYkTJwA4e/YssbGxNG3aFG9vbzp06MCR\nI0euimH+/PlER0ebt0NDQxkyZIh5OzAwkO3btwMXexP37t3L+++/zyeffMJrr72Gu7s7/fv3N5ff\nsmUL7dq1w8vLi5iYGM6dO1futVfWNgUFBURHR9OkSRNCQ0P597//bd6XmJjIoEGDiIuLw9PTk+Tk\nZCIjI3nhhRd48MEHcXd3Jzo6mqNHjzJs2DA8PT3p0KEDBw4cMB9j4sSJtGjRAk9PTyIiItiwYUO5\ncRqNRpycnCgtLeX7778395q7u7vTsGFDgoODAcjJyaFTp054e3vj5+fH+PHjOX/+PABdu3YFoF27\ndri7u7NkyRIyMzMJDAw0n2fnzp1ERkbi7e3NnXfeyfLly837RowYwTPPPEPfvn3x8PDg/vvvt+jV\nFRER+6EkVkREgP8me3l5eWRkZNCxY0fzvpCQEDZs2MDvv//OjBkziI2N5fDhw+b9OTk5tGnThmPH\njjF58mQSEhLM+5588knat2/PsWPHePHFF/noo4/Mw0Z37drFk08+yTvvvMPRo0eJioqiX79+XLhw\nAbjYQ/zFF1+wevVqfv31V1asWEHv3r2ZM2cOR44cobS0lHfeeafK15qSksKLL75IcXExnTp1ol+/\nfoSHh1NQUMDq1at56623+PrrrwF45513SE1NZd26dRw6dAhvb2+eeeYZAD766CN+//138vLyOH78\nOPPmzaNRo0ZXnS8yMpL169cDFxPH8+fPk5WVBcC+ffs4ffo0d999t7m8wWBg9OjRDBs2jClTpnDq\n1CmWLVtmbqclS5bw1VdfsX//frZv305ycvI1r7WitomJiaFFixYcOnSIzz//nOnTp7NmzRrz/tTU\nVAYPHszJkycZNmwYAJ999hmLFi0iPz+fvXv30qlTJxISEjh+/DhhYWHMnDnTXL9Dhw5s27aNEydO\n8OSTTzJ48GBKSkoqbJtOnTqZe81PnDjB/fffz5NPPgmAi4sLb7/9NseOHeP7779n9erV/O///i8A\n69atA2D79u2cOnWKwYMHWxz3/Pnz9OvXj169evHbb7/x7rvvMmzYMHbt2mUus3jxYhITEzlx4gQh\nISE8//zzFcYqIiK1Q0msiIhQVlbGgAED8PDwoEWLFrRu3ZoXXnjBvH/QoEH4+voCMGTIEEJDQ8nO\nzjbvb9myJQkJCRgMBoYPH86hQ4c4cuQIBw8e5IcffuCll16iQYMGdOnShX79+pnrLV68mL59+/Lw\nww/j7OzMX//6V86cOcPGjRvNZcaPH0+zZs3w8/OjS5cudOrUiXbt2nHzzTfz2GOPsWXLlipdq8Fg\nYMCAAXTq1Am4mPQcPXqUF154ARcXF4KDgxk1ahSffvopAP/61794+eWX8fPzo0GDBsyYMYPPP/8c\nk8nETTfdxLFjx9i9ezcGg4Hw8HDc3d2vOmdwcDDu7u5s2bKFdevW0bNnT/z8/Pj1119Zu3atuRfx\nWm1zZfwTJkzA19cXb29v+vXrx9atW69Z/1ptk5uby8aNG5k7dy433XQT7dq1Y9SoUSxYsMBc94EH\nHjD3IDds2BCDwcDIkSMJDg7Gw8OD3r17c9ttt9G9e3ecnZ0ZPHiwRXsMGzYMb29vnJyceO655zh3\n7hy//vqrFa100fjx4/Hw8OCVV14B4N5776VDhw44OTnRsmVLRo8ezdq1a606VlZWFqdPn2bq1Km4\nuLjw0EMP0bdvX1JSUsxlHn/8cSIiInB2dmbYsGEVPq8iIlJ7XGo7ABERqX0Gg4Fly5bRvXt31q1b\nR79+/fjhhx/o0KEDAAsWLODNN980z5pbXFzMsWPHzPUvJbgArq6u5jJHjhzB29vboneyZcuW5OXl\nARd7JVu0aGERR2BgIPn5+ebHfHx8zL83atTIYrthw4YUFxdX+XoDAgLMvx84cICCggK8vb3Nj5lM\nJnNieeDAAR577DGcnP77va+LiwtHjhwhLi6O3NxcYmJiKCoqIjY2lldeeQUXl6v/vXbr1o3MzEz2\n7NlDt27d8PLyYu3atXz//fd069atSvFf/nw3atSIgoICq8pe3ja//fYbjRs3xs3Nzby/RYsW/PDD\nD+bty5+nS658/ps3b26xfXl7/P3vf+fDDz+koKAAg8HA77//ftVw8muZN28e69ats/iyZNeuXTz3\n3HNs2rSJP/74gwsXLhAREWHV8QoKCiyGFsPFv8VLz53BYLjqb606f1siIlLz1BMrIiIWunbtyvjx\n45kyZQpwMYkbPXo0//znPzl+/DgnTpzgzjvvtGoCnVtvvZUTJ07wxx9/mB+7/J5Jf39/i+2ysjJy\nc3Px9/e/5jGvx8Q9V86MGxwczIkTJ8w/v//+OytWrDDvz8jIsNj/xx9/cOutt+Li4sL//M//8NNP\nP7Fx40ZWrFhh0ZN5uW7durFmzRrWr19PZGSkOaldu3btNZNYa2brre6Mvn5+fhw/ftwiUTt48KBF\n4lrZsSvav379el5//XWWLFlCUVERJ06cwNPT06r2W79+Pf/zP//DsmXLuOWWW8yPjx07lrZt27Jn\nzx5OnjzJK6+8YvXEXH5+fuTm5lqc/8CBAxX+rYmIiH1SEisiIleZNGkSOTk5ZGdnc/r0aQwGA02b\nNqW0tJT58+ezY8cOq47TsmVLIiIimDFjBufPn2fDhg3m5BBg8ODBrFy5km+//Zbz58/zxhtv0LBh\nQx544IGaurSrkqgOHTrg7u7Oa6+9xpkzZzCZTOzYscPcI/mnP/2J6dOnc/DgQQB+++03UlNTAcjM\nzOTHH3/EZDLh7u5OgwYNcHZ2Lve8l5LYs2fP4ufnR+fOncnIyOD48eOEh4eXW8fHx6fSyYWqm9QH\nBgbywAMPMG3aNM6dO8f27dv58MMPiY2Ntfp8FZ371KlTuLi40LRpU0pKSpg1a5ZVyzbl5uYyZMgQ\nFi5cSEhIiMW+4uJi87JJv/zyC++9957Ffh8fH/bu3VvucTt27IirqyuvvfYa58+fJzMzkxUrVhAT\nE1PptYiIiH1REisiIldp2rQp8fHxzJ07l7Zt2/KXv/yFTp064evry44dO+jcubO5bHnrll6+/ckn\nn5CdnU3jxo2ZNWsW8fHx5n233347ixYtMt/3unLlSpYvX17ucNzyjm3tmqkV1XFycmLFihVs3bqV\nVq1a0axZM0aPHm1OuCZOnEh0dDQ9evTAw8ODTp06kZOTA0BhYSGDBw/G09OTtm3bEhkZSVxcXLkx\nhIaG4u7uTpcuXQDw8PCgdevWPPjgg1fFd0lCQgI///wz3t7ePP7449e8tms9B5W1TUpKCkajET8/\nPx5//HFmzZpF9+7dKzxuZc//pe1evXrRq1cvbrvtNoKCgmjUqNFVQ8fLu+7Vq1dz5MgRBg4caJ6h\n+K677gIuDk/+5JNP8PDwYPTo0cTExFgcIzExkfj4eLy9vfn8888tznHTTTexfPly0tPTadasGePG\njWPhwoXcdtttVj1XIiJiPwxl+upRRERERERE6gibe2IzMjJo06YNoaGhzJ07t9wyEyZMIDQ0lHbt\n2lnMWlhUVMSgQYMICwujbdu25uUGRERERERERMpjUxJrMpkYN24cGRkZ/Pzzz6SkpLBz506LMmlp\naezZs4fdu3fz/vvvM3bsWPO+iRMnEhUVxc6dO9m+fTthYWG2hCMiIiIiIiL1nE1JbE5ODiEhIQQF\nBdGgQQNiYmLMi7Ffkpqaar7/qWPHjhQVFXH48GFOnjzJ+vXreeqpp4CLyxV4enraEo6IiIiIiIjU\nczatE5ufn2+x5lpAQIDFem7XKpOXl4ezszPNmjVj5MiRbNu2jfvuu4+3337bvIbdJZpUQURERERE\npH6rylRNNvXEWptgXhmQwWDgwoULbN68mT//+c9s3rwZNzc35syZc836+nG8nxkzZtR6DPpR++tH\n7a8ftb1+1P76Udvrp2Z/qsqmJNbf35/c3Fzzdm5ursUi6eWVycvLw9/fn4CAAAICAmjfvj0AgwYN\nYvPmzbaEIyIiIiIiIvWcTUlsREQEu3fvxmg0UlJSwuLFi4mOjrYoEx0dzYIFCwDIysrCy8sLHx8f\nfH19CQwMZNeuXQCsWrWKO+64w5ZwREREREREpJ6z6Z5YFxcXkpKS6NmzJyaTiYSEBMLCwpg3bx4A\nY8aMISoqirS0NEJCQnBzc2P+/Pnm+u+++y7Dhg2jpKSE1q1bW+wTiYyMrO0QpBap/R2b2t9xqe0d\nm9rfcantpSoMZdUZhHwDGQyGao2TFhEREREREftX1ZzPpp5YERERERGxTuPGjTlx4kRthyFSa7y9\nvTl+/LjNx1FPrIiIiIjIDaDPteLorvUaqOprw6aJnURERERERERuJCWxIiIiIiIiUmcoiRURERER\nEZE6Q0msiIiIiIiI1BlKYkVEREREpF6Kiopi4cKF171sRTIzMwkMDLS6fGRkJP/5z39sPq8j0RI7\nIiIiIiK1YOrUuRQWnqmx4/v6NmLOnClVqhMZGcn27dspLCzkpptuIisri0ceeYTDhw/j5uZmUTY8\nPJynn36aqKgoWrVqxYULF3Bysq8+srS0tBopez0ZDAYMBoNVZYOCgvjwww/p3r17DUdl35TEioiI\niIjUgsLCMwQFJdbY8Y3Gqh3baDSSk5NDixYtSE1NZdCgQdx///0EBATw+eefEx8fby67Y8cOdu7c\nydChQzl58uR1jtx2l5ZrsTY5rCu0TNNF9vVViYiIiIiI1IoFCxbwyCOPEBcXx0cffWR+PD4+ngUL\nFlxVtk+fPnh7e1d63IKCAqKjo2nSpAmhoaH8+9//Nu9LTExkyJAhxMfH4+HhwZ133smmTZuueayN\nGzfSvn17vLy86NChA99//715X2RkJC+88AIPPvggt9xyC/v27bMYqmsymfjLX/5Cs2bNaNWqFUlJ\nSTg5OVFaWmquf6lscnIynTt35m9/+xuNGzemVatWZGRkmM81f/582rZti4eHB61bt+b999+v9Hm4\n5JtvvqFNmzZ4eXkxfvx4ysrKzInp3r176d69O02bNqVZs2bExsaavySIi4vj4MGD9OvXD3d3d/7+\n978DMHjwYG699Va8vLzo1q0bP//8s9Wx1FVKYkVEREREhAULFvDEE08wZMgQvvrqK44cOQJAbGws\n69atIy8vD4DS0lJSUlIsemYrEhMTQ4sWLTh06BCff/4506dPZ82aNeb9y5cvN/foRkdHM27cuHKP\nc/z4cfr06cOkSZM4fvw4zz33HH369OHEiRPmMosWLeLf//43p06domXLlhZDdT/44AMyMjLYtm0b\nmzdvZunSpRY9tVcO683JyaFNmzYcO3aMyZMnk5CQYN7n4+PDypUr+f3335k/fz7PPvssW7ZsqfS5\nOHr0KAMHDuTVV1/l2LFjtG7dmu+++87ivM8//zyHDh1i586d5ObmkpiYCMDChQtp0aIFK1as4NSp\nU/z1r38FoE+fPuzZs4fffvuNe++9l2HDhlUaR12nJFZERERExMFt2LCB/Px8oqOjCQ0NpW3btnzy\nyScABAYGEhkZaZ70aPXq1Zw7d44+ffpUetzc3Fw2btzI3Llzuemmm2jXrh2jRo2y6Nnt0qULvXr1\nwmAwEBsby7Zt28o91sqVK7n99tsZNmwYTk5OxMTE0KZNG1JTU4GLSeiIESMICwvDyckJFxfLOyc/\n++wzJk2ahJ+fH15eXkybNq3CobktW7YkISEBg8HA8OHDOXTokDmxj4qKIjg4GICuXbvSo0cP1q9f\nX+nzkZaWxp133snjjz+Os7MzkyZNwtfX17y/devWPPzwwzRo0ICmTZvy7LPPsnbt2gqPOWLECNzc\n3GjQoAEzZsxg27ZtnDp1qtJY6jIlsSIiIiIiDu6jjz6iR48euLu7AxeHqF45pPhSErtw4UKGDh2K\ns7NzpcctKCigcePGFpNCtWjRgvz8fPO2j4+P+XdXV1fOnj1rHuJ75bFatGhh8VjLli0pKCgwb1c0\nK/ChQ4cs9gcEBFQY++XJpaurKwDFxcUApKenc//999OkSRO8vb1JS0vj2LFjFR7v0jVced7LYzp8\n+DAxMTEEBATg6elJXFxchcctLS1l6tSphISE4OnpSXBwMAaDgaNHj1YaS12mJFZERERExIGdOXOG\nzz77jG+//ZZbb72VW2+9lTfeeINt27axfft2AB577DHy8vJYs2YNX375pdVDif38/Dh+/Lg5+QM4\nePBgpQlkefz9/Tlw4IDFYwcOHMDf39+8XdFETrfeeiu5ubnm7ct/r4pz584xcOBAJk+ezJEjRzhx\n4gRRUVFWTbjk5+dncd6ysjKL7enTp+Ps7MyOHTs4efIkCxcutEjor7y+jz/+mNTUVFavXs3JkyfZ\nv3+/xT229ZWSWBERERERB7Z06VJcXFzYuXMn27ZtY9u2bezcuZMuXbqYh/26ubkxaNAgRo4cSVBQ\nEPfee69Vxw4MDOSBBx5g2rRpnDt3ju3bt/Phhx8SGxtb5TijoqLYtWsXKSkpXLhwgcWLF/PLL7/Q\nt29fc5mKkrchQ4bw9ttvU1BQQFFREXPnzq3W7MUlJSWUlJTQtGlTnJycSE9P5+uvv7aqbp8+ffjp\np5/48ssvuXDhAu+88w6FhYXm/cXFxbi5ueHh4UF+fj6vv/66RX0fHx/27t1rUf7mm2+mcePGnD59\nmunTp1f5euoim5fYycjIYNKkSZhMJkaNGsWUKVevRTVhwgTS09NxdXUlOTmZ8PBw4OI6Rx4eHjg7\nO9OgQQNycnJsDUdEREREpE7w9W1U5WVwqnp8ayxYsICnnnrqqt7RcePGMXHiRF577TWcnJyIj48n\nOTmZuXPnXnWMipLBlJQU/vSnP+Hn54e3tzezZs0yr3Na3hqp1zpW48aNWbFiBRMnTmTs2LGEhoay\nYsUKGjdubFUcTz/9NLt27eLuu+/G09OT8ePHs3bt2nLXtq0oLnd3d9555x2GDBnCuXPn6NevH/37\n97fqGpo0acKSJUuYMGECI0eOJC4ujs6dO5v3z5gxg+HDh+Pp6UloaCixsbG89dZb5v3Tpk1j/Pjx\nTJ48mRdffJExY8bw1Vdf4e/vT5MmTZg1axbz5s275nNQXxjKbOhrNplM3H777axatQp/f3/at29P\nSkoKYWFh5jJpaWkkJSWRlpZGdnY2EydOJCsrC4Dg4GA2bdpk8Yd3VYBaC0lERERE6gF9rrUv6enp\njB07FqPRWNuhOIxrvQaq+tqwqSc2JyeHkJAQgoKCgIvTZy9btswiiU1NTTWPme/YsSNFRUUcPnzY\nfAO3XsgiItfH1MSpFBYVVlrO18uXOYlzbkBEIiIi9uPs2bN8++239OjRg8OHDzNz5kwef/zx2g5L\nqsGmJDY/P/+qGb6ys7MrLZOfn4+Pjw8Gg4FHHnkEZ2dnxowZw9NPP13ueS6tjQQXFyGOjIy0JWwR\nkXqpsKiQoAFBlZYzLjXWeCwiIiL2pqysjMTERGJiYmjUqBF9+/Zl1qxZtR2WQ8rMzCQzM7Pa9W1K\nYq29Efpava0bNmzAz8+P3377jUcffZQ2bdrQpUuXq8pdnsSKiIiIiIhUVaNGjTQHj524smNy5syZ\nVapv0+zE/v7+V01TfeUN4VeWycvLM0+D7efnB0CzZs147LHH9EclIiIiIiIiFbIpiY2IiGD37t0Y\njUZKSkpYvHgx0dHRFmWio6PNU3NnZWXh5eWFj48Pf/zxB6dOnQLg9OnTfP3119x11122hCMiIiIi\nIiL1nE3DiV1cXEhKSqJnz56YTCYSEhIICwszT+s8ZswYoqKiSEtLIyQkBDc3N+bPnw9AYWGh+Ubq\nCxcuMGzYMHr06GHj5YiIiIiIiEh9ZtMSOzeCpiIXEbHOiEkjrJ7YKfmt5BqPR0RELOlzrTi667XE\njk3DiUVERERERERuJCWxIiIiIiJiFXd3d4xG4zX3BwUFsXr16hsXkB04ePAg7u7u172X/YUXXqBZ\ns2bmyXDlv2y6J1ZERERERKpnauJUCosKa+z4vl6+zEmcc12PeWliVoARI0YQGBjISy+9ZH7MYDBY\nvQxndRmNRlq1asWFCxdwcqr9PrkWLVpYPC/Xw8GDB/nHP/5Bbm4uTZo0selYmZmZxMXFWawYU9cp\niRURERERqQWFRYVWzWVQXcalxho7tj2oqOfTZDLh7Ox8A6O5vg4ePEiTJk1sTmCvhwsXLuDiYl9p\nY+1/dSEiIiIiIrVm/vz5FstkhoaGMmTIEPN2YGAg27dvB8DJyYm9e/fy/vvv88knn/Daa6/h7u5O\n//79zeW3bNlCu3bt8PLyIiYmhnPnzl3z3B9++CFt27alcePG9OrVi4MHDwIwd+5c7r//fkwmEwDv\nvfced955J+fOnaNr164AeHl54eHhQVZWFsnJyTz44IM899xzNG3alJkzZ7Jv3z66d+9O06ZNadas\nGbGxsZw8efKasTg5OTFv3jxuu+02vL29GTdunHlfWVkZL7/8MkFBQfj4+BAfH8/vv/8OXOwZdnJy\norS0FIDk5GRat26Nh4cHrVq1IiUlhZKSEho3bsyOHTvMxzxy5Ahubm4cO3bMIo5Vq1bRo0cPCgoK\ncHd356mnngIuLlf6wAMP4O3tzT333MPatWst2rBt27Z4eHjQunVr3n//feDiUqa9e/c2H8vDw4ND\nhw4xYsQIXnzxRXP9zMxMAgMDzdtBQUG89tpr3H333bi7u1NaWlrh+a+85k8++eSaz/P1YF8ptYiI\nDawdllUTw6tERETqqsjISJ577jkACgoKOH/+PFlZWQDs27eP06dPc/fdd5vLGwwGRo8ezffff09g\nYCCzZs0y7ysrK2PJkiV89dVX3HzzzTz44IMkJyczZsyYq867bNkyZs+ezYoVKwgNDWX27NkMHTqU\n7777jsmTJ5OWlsbLL7/Mk08+yfPPP8+aNWu4+eabWb9+PcHBwZw8edI8nPiXX34hJyeHJ598kiNH\njlBSUkJ+fj7PP/88Xbt25eTJkwwcOJDExETefPPNaz4XK1eu5IcffuDkyZPcd9999OvXj549ezJ/\n/nw++ugjMjMzadasGcOHD2fcuHEsWLDAov7p06eZOHEiP/zwA6GhoRw+fJhjx45x0003MXToUBYt\nWsScORc/g6SkpPDII49c1dv6yCOPkJ6eTmxsrHkIcH5+Pn379mXRokX06tWLVatWMXDgQH799Vea\nNGmCj48PK1euJDg4mHXr1tG7d2/at29PeHg4GRkZFse61IaVDfv+9NNPSU9Pp2nTphw6dOia52/Y\nsGG511yT1BMrIvXGpWFZlf3U5P1HIiIidU1wcDDu7u5s2bKFdevW0bNnT/z8/Pj1119Zu3atueez\nPFcO6TUYDEyYMAFfX1+8vb3p168fW7duLbfuv/71L6ZNm8btt9+Ok5MT06ZNY+vWreTm5mIwGFiw\nYAHvvPMO/fv3Z8qUKbRr167cc17i5+fHM888g5OTEw0bNqR169Y8/PDDNGjQgKZNm/Lss89a9B6W\nZ+rUqXh4eBAYGMhDDz3Etm3bAPj444/5y1/+QlBQEG5ubsyePZtPP/3U3Pt6OScnJ3788UfOnDmD\nj48Pbdu2BWD48OGkpKSYyy1cuJC4uDirntdFixYRFRVFr169gIuJbkREBCtXrgQgKiqK4OBgALp2\n7UqPHj1Yv359hc9XRcOxL7Wjv78/N998c4XnNxgM17zmmqIkVkRERETEwXXr1o3MzEzWr19Pt27d\n6NatG2vXrmXdunV069atSsfy9fU1/96oUSOKi4vLLXfgwAEmTpyIt7c33t7e5h7J/Px8AFq2bElk\nZCQHDhzgmWeeqfS8lw+HBTh8+DAxMTEEBATg6elJXFxcpT2El8fu6upqjv3QoUO0bNnSvK9FixZc\nuHCBw4cPW9R3c3Nj8eLF/Otf/8LPz4++ffvy66+/AtCxY0caNWpEZmYmv/zyC3v37rUYxl2RAwcO\nsGTJEvNz5e3tzXfffUdh4cUv5tPT07n//vtp0qQJ3t7epKWl2dwbevnzWdH5XV1dr3nNNUVJrIiI\niIiIg+vWrRtr1qxh/fr1REZGmpPatWvXXjOJtWYW4orKtGjRgvfff58TJ06Yf06fPs39998PXBza\nm5WVxcNMv+q2AAAeBklEQVQPP8xf//rXSo955ePTp0/H2dmZHTt2cPLkSRYuXFhuz6k1/Pz8LJYW\nOnjwIC4uLvj4+FxVtkePHnz99dcUFhbSpk0bnn76afO++Ph4Fi1axMKFCxk8eDA33XSTVedv0aIF\ncXFxFs/VqVOnmDx5MufOnWPgwIFMnjyZI0eOcOLECaKiosw9reU9X25ubvzxxx/m7UvJ8OUur1fR\n+Su75pqgJFZERERExMFdSmLPnj2Ln58fnTt3JiMjg+PHjxMeHl5uHR8fH/bt21fhcSsasvqnP/2J\nV199lZ9//hmAkydPsmTJEgCOHj3K008/zX/+8x+Sk5NZvnw56enpADRr1sw8wVRFiouLcXNzw8PD\ng/z8fF5//fUKy5cX+6X4hw4dyptvvonRaKS4uJjp06cTExNz1RI/R44cYdmyZZw+fZoGDRrg5uZm\nMUtybGwsX3zxBR9//DHDhw+3OpbY2FiWL1/O119/jclk4uzZs2RmZpKfn09JSQklJSU0bdoUJycn\n0tPT+frrr811fXx8OHbsmHkiKoB77rmHtLQ0Tpw4QWFhIW+99Va1z1/ZNdcETewkIiIiIlILfL18\na3QZHF8v38oL/Z/Q0FDc3d3p0qULgHmW2+bNm1v0yF3+e0JCAoMHD8bb25uHHnqIL7744qrjVjSB\n0IABAyguLiYmJoYDBw7g6elJjx49GDx4MGPGjGHAgAHmezD/85//kJCQwI4dO/D29ub555/nwQcf\n5MKFC6Snp5d7nhkzZjB8+HA8PT0JDQ0lNja2wmTtyvqXH/Opp56ioKCArl27cvbsWXr16sW77757\nVd3S0lLefPNN4uPjMRgMhIeH895775nLBQYGcu+997Jv3z46d+58zViujCcgIIBly5YxefJkhg4d\nirOzMx07duS9997D3d2dd955hyFDhnDu3Dn69etnMVt0mzZtGDp0KK1ataK0tJSff/6ZuLg4Vq1a\nRVBQEMHBwYwYMYJ//OMf14ylovNXds01wVBW0dcjdsBgMFT4DY6IyCUjJo2war0941IjyW8l13g8\nN5qjX7+IiL3T51qBi8m/v7+/xazOjuJar4GqvjbUEysiIiIOZ+rUuRQWnqm0nK9vI+bMmXIDIhIR\nR2A0Gvniiy+uOWOzWEdJrIiIiDicwsIzBAUlVlrOaKy8jIiINV588UXeeustpk+fbjHTsVSdklgR\nEREREZEa9tJLL/HSSy/Vdhj1gs2zE2dkZNCmTRtCQ0OZO3duuWUmTJhAaGgo7dq1Y8uWLRb7TCYT\n4eHh9OvXz9ZQREREREREpJ6zKYk1mUyMGzeOjIwMfv75Z1JSUti5c6dFmbS0NPbs2cPu3bt5//33\nGTt2rMX+t99+m7Zt21q1zpSIiIiIiIg4NpuS2JycHEJCQggKCqJBgwbExMSwbNkyizKpqanEx8cD\n0LFjR4qKijh8+DAAeXl5pKWlMWrUKM3UJiIiIiIiIpWy6Z7Y/Px8AgMDzdsBAQFkZ2dXWiY/Px8f\nHx+effZZXn/9dYuFd8uTmJho/j0yMpLIyEhbwhYRERERueG8vb01+lAcmre3NwCZmZlkZmZW+zg2\nJbHWvgiv7GUtKytjxYoVNG/enPDw8Eov4PIkVkRERESkLjp+/HhthyBiF67smJw5c2aV6ts0nNjf\n35/c3Fzzdm5uLgEBARWWycvLw9/fn40bN5KamkpwcDBDhw7l22+/Zfjw4baEIyIiIiIiIvWcTUls\nREQEu3fvxmg0UlJSwuLFi4mOjrYoEx0dzYIFCwDIysrCy8sLX19fXn31VXJzc9m/fz+ffvop3bt3\nN5cTERERERERKY9Nw4ldXFxISkqiZ8+emEwmEhISCAsLY968eQCMGTOGqKgo0tLSCAkJwc3Njfnz\n55d7LN0fICIiIiIiIpWxKYkF6N27N71797Z4bMyYMRbbSUlJFR6jW7dudOvWzdZQREREREREpJ6z\naTixiIiIiIiIyI2kJFZERERERETqDCWxIiIiIiIiUmcoiRUREREREZE6Q0msiIiIiIiI1BlKYkVE\nRERERKTOUBIrIiIiIiIidYaSWBEREREREakzlMSKiIiIiIhIneFS2wGIiIhcaerUuRQWnqm0nK9v\nI+bMmXIDIhIRqZqpiVMpLCqstJyvly9zEufcgIhE6g8lsSIiYncKC88QFJRYaTmjsfIyIiK1obCo\nkKABQZWWMy411ngsIvWNklgRqTc2bdrBVoyVljNtKq75YERERESkRiiJFZF648yZCwR4RVZaLu/M\n0poPphYoiRcRsR96TxapOUpiRUTqCUdP4kVE7Inek0VqjpJYERGxO5t+WsVWo7HScqbTe4DEmg5H\nRERE7IjNSWxGRgaTJk3CZDIxatQopky5epbICRMmkJ6ejqurK8nJyYSHh3P27Fm6devGuXPnKCkp\noX///syePdvWcEREpB44U1ZMQGRQpeXyVmyt+WBERETErtiUxJpMJsaNG8eqVavw9/enffv2REdH\nExYWZi6TlpbGnj172L17N9nZ2YwdO5asrCwaNmzImjVrcHV15cKFC3Tu3JkNGzbQuXNnmy9KREQq\np2VsxJFVtbff2tcL6DVjC70viYg1bEpic3JyCAkJISgoCICYmBiWLVtmkcSmpqYSHx8PQMeOHSkq\nKuLw4cP4+Pjg6uoKQElJCSaTicaNG9sSjoiIVIGWsRFHVtXefmtfL6DXjC30viQi1rApic3Pzycw\nMNC8HRAQQHZ2dqVl8vLy8PHxwWQycd9997F3717Gjh1L27Ztyz1PYmKi+ffIyEgiIyNtCVtERERE\nRERqSWZmJpmZmdWub1MSazAYrCpXVlZWbj1nZ2e2bt3KyZMn6dmzJ5mZmeUmqJcnsSIiIlI7piZO\npbCosNJyvl6+zEmccwMiEhGpGr2P2YcrOyZnzpxZpfo2JbH+/v7k5uaat3NzcwkICKiwTF5eHv7+\n/hZlPD096dOnDz/88IN6WaVO0D07IuKICosKCRoQVGk541JjjcciIlIdeh+rH2xKYiMiIti9ezdG\noxE/Pz8WL15MSkqKRZno6GiSkpKIiYkhKysLLy8vfHx8OHr0KC4uLnh5eXHmzBm++eYbZsyYYdPF\niNwoumen5umLAhEREREpj01JrIuLC0lJSfTs2ROTyURCQgJhYWHMmzcPgDFjxhAVFUVaWhohISG4\nubkxf/58AA4dOkR8fDylpaWUlpYSFxfHww8/bPsViUi9oC8KRERERKQ8Nq8T27t3b3r37m3x2Jgx\nYyy2k5KSrqp31113sXnzZltPLyIiIlLjrF2SB/67LI+IiNQMm5NYEZHKaGiwiPXseT3STZt2sBVj\npeVMm4prPpgbzNoleeC/y/KIiEjNUBIrIjVOQ4NFrGfP65GeOXOBAK/ISsvlnVla88GIiIjDUhIr\nIiIiUodpyRARcTRKYrH+zR/0D0BERETsiyMvGaLPcCKOSUks1r/5Q/38ByAiIiJSF+kznIhjUhIr\nIiIiIiJ1jobSOy4lsSIiIiIiUuc48lB6R6ckVkQclu6lkqrSclH2Sb0xIiKORUms2C0lGPXHpp9W\nsdVorLSc6fQeILGmwzHTvVRSVVouyj6pN0ZExLEoia1n7Dnxq+o35Uow6o8zZcUERAZVWi5vxdaa\nD0ZEpJ7ZtGkHWzFWWs60qbjmgxERuQGUxNYz9pz46ZtyEanr7HVUgTi2M2cuEOAVWWm5vDNLaz4Y\nEZEbQEmsiIiIlaozqkD3a4pYT18UiYg1lMSKiIjUII1CcVyaCKzqdPuJiFhDSayIiEgdp2TJPmki\nMBGRmqEkVuyWtRNVgCarkPrHXpOS6sRlr9dSnyhZsk8aGitSszSpmeOyOYnNyMhg0qRJmEwmRo0a\nxZQpV38AmTBhAunp6bi6upKcnEx4eDi5ubkMHz6cI0eOYDAYGD16NBMmTLA1HKlHrJ2oAjRZhdQ/\n9pqUVCcue70WkZqmobEiNUuTmjkum5JYk8nEuHHjWLVqFf7+/rRv357o6GjCwsLMZdLS0tizZw+7\nd+8mOzubsWPHkpWVRYMGDXjzzTe55557KC4u5r777uPRRx+1qCvqwRCRus/Re6PUUyAiInJ92ZTE\n5uTkEBISQlBQEAAxMTEsW7bMIhFNTU0lPj4egI4dO1JUVMThw4fx9fXF19cXgFtuuYWwsDAKCgqU\nxF5BPRgiUtc5em+UegpERESuL5uS2Pz8fAIDA83bAQEBZGdnV1omLy8PHx8f82NGo5EtW7bQsWPH\ncs+TmJho/j0yMpLIyEhbwhYREREREStpqTC53jIzM8nMzKx2fZuSWIPBYFW5srKya9YrLi5m0KBB\nvP3229xyyy3l1r88iRURERERkRunPi0Vpls87MOVHZMzZ86sUn2bklh/f39yc3PN27m5uQQEBFRY\nJi8vD39/fwDOnz/PwIEDiY2NZcCAAbaEIiL1jKPfRykijklzYdgntUv9oVs86gebktiIiAh2796N\n0WjEz8+PxYsXk5KSYlEmOjqapKQkYmJiyMrKwsvLCx8fH8rKykhISKBt27ZMmjTJposQudGUYNW8\nG3EfpaMv46S/YxH7o7kwquZGvY+rXUTsi01JrIuLC0lJSfTs2ROTyURCQgJhYWHMmzcPgDFjxhAV\nFUVaWhohISG4ubkxf/58AL777jsWLVrE3XffTXh4OACzZ8+mV69eNl6SSM1z9Ilq6gtHX8ZJf8dS\nX2h4oONy9PdxEUdl8zqxvXv3pnfv3haPjRkzxmI7KSnpqnqdO3emtLTU1tOLyA1m7ZAq0LAqEbkx\nNDxQappGrojYF5uTWBFxLNYOqQINqxIRkfpBI1dE7IuSWHRfnIiItdQbUfOsfY5Bz7OIiDgmJbHo\nfgoREWupN6LmWfscw3+f5+p8uaDZVkVEpK5SEivi4PRBVqTuq86XC5ptVUSspcnTxN4oiRVxcCtX\nL8fZLaTScqaf9jAHJbEiIiKORpOnib1REis3jL7Fs08aHioiIo5kauJUCosKKy3n6+XLnMQ5NyAi\nEakqJbFyw+hbPBEREaltK1evwvm+WyotZ1q9gzmJNR9PfaTl+KSmKYkVkSrRzKkiIlKX6Uv1mqfl\n+KSmKYkVkSqpzsypImJ/tFySiIjUVUpiRUREHJDuhxcRkbpKSaydq+o35dZOngSaQElEREREROoe\nJbF2rqrflFt7nwfoXg8REREREal7nGo7ABERERERERFrqSdWHJ7WixMRERERqTuUxIrDKywqJGhA\nUKXljEuNNR6LyCWaOVbEMem1L2JfrO3sAHV43Eg2J7EZGRlMmjQJk8nEqFGjmDLl6sWKJ0yYQHp6\nOq6uriQnJxMeHg7AU089xcqVK2nevDk//vijraGIVIu1k2FpIiy5kTRzrIhj0mtfxL5Y29kB6vC4\nkWxKYk0mE+PGjWPVqlX4+/vTvn17oqOjCQsLM5dJS0tjz5497N69m+zsbMaOHUtWVhYAI0eOZPz4\n8QwfPty2q7iChodKVWjRcxEREZHapc/vUhU2JbE5OTmEhIQQFBQEQExMDMuWLbNIYlNTU4mPjweg\nY8eOFBUVUVhYiK+vL126dMFoxZCZqrLX4aF6cYqIiIiIXM1eP7+LfbIpic3PzycwMNC8HRAQQHZ2\ndqVl8vPz8fX1tfo8iYmJ5t8jIyOJjIyssLy9Dg/Vi9NxTZ06l8LCM1aV9fVtxJw5Vw/LFxERERGp\nDzIzM8nMzKx2fZuSWIPBYFW5srKyatW75PIk1hoaHir2prDwDEFBiVaVNRqtKyciIiIiUhdd2TE5\nc+bMKtW3KYn19/cnNzfXvJ2bm0tAQECFZfLy8vD397fltHZBQ4NFRERERERuPJuS2IiICHbv3o3R\naMTPz4/FixeTkpJiUSY6OpqkpCRiYmLIysrCy8sLHx8fm4K2BxoaLCIiIiJ1jTpiqsba2xRBK1nc\nSDYlsS4uLiQlJdGzZ09MJhMJCQmEhYUxb948AMaMGUNUVBRpaWmEhITg5ubG/PnzzfWHDh3K2rVr\nOXbsGIGBgcyaNYuRI0fadkU3iL3ed+vo9MYsIiIicm322hFjr5+trb1NEXSr4o1k8zqxvXv3pnfv\n3haPjRkzxmI7KSmp3LpX9trWJbrv1j7Z6xuziIiIiFybPltLVdicxIrYE3v9Fm/TT6vYauVyUqbT\ne4DEmgxHRERERKTOUhIr9Yq9fot3pqyYgMggq8rmrdhas8GIiIiIiNRhSmJvIHvtJRQRERG53jRP\nhePSCDSpaUpibyB77SUUERERud40T0XVWJv0g/0n/hqBJjVNSayIiIiISC2zNukHJf4iTrUdgIiI\niIiIiIi1lMSKiIiIiIhInaHhxKKJF0REROS604SWIlJTlMSKJl4QERGR604TWtonfbkg9YGSWBER\nERGRWmZtcgm2JZj6ckHqAyWxIiIiIiK1zNrkEpRgimhiJxEREREREakzlMSKiIiIiIhInaHhxCJ2\naurUuRQWnqm0nK9vI+bMmXIDIhJQu4hI3WftqgSglQlExD4piRXNUmenCgvPEBSUWGk5o7HyMnL9\nqF1EpK5buXoVzvfdYlVZ0+odzEms2XhERKrK5iQ2IyODSZMmYTKZGDVqFFOmXN3zMGHCBNLT03F1\ndSU5OZnw8HCr60rN0yx1IiIijkMTCIlIXWdTEmsymRg3bhyrVq3C39+f9u3bEx0dTVhYmLlMWloa\ne/bsYffu3WRnZzN27FiysrKsqiviyDb9tIqtRmOl5Uyn9wCJNR2O/B+1i32ydnikhkbaPw3ZFxGR\nytiUxObk5BASEkJQUBAAMTExLFu2zCIRTU1NJT4+HoCOHTtSVFREYWEh+/fvr7Su2C99yKh5Z8qK\nCYgMqrRc3oqtNR+MmFWnXfR6qXnWDo/U0Ej7t3L1cpzdQiotZ/ppD3PQ60Ucm77AE0dlUxKbn59P\nYGCgeTsgIIDs7OxKy+Tn51NQUFBp3UsuJboAXl5eeHl5lVsuMzMTgKbuXuStqHz4S1N3ryqVr06d\nS+VvVJ0bdS0bNqyiuPh8pXVuuaUB/N+HDHu9lvrULp0f6UzxhcrvXb7F5RY2rNpQrfOoXezz9VKd\nOvbaLtWp4+ZyC0c3FFXpHJGRkZWWv6S6/1+qU6c+vcaq8hzDxefZ7RYXjp6q/Mu5+vp+Ya/X0rnz\no1a/j23Y8E214qpOHUdvlw0bNlj9f7+6cVWnjqO3i1QuMzPT/L+1OgxlZWVl1a38//7f/yMjI4MP\nPvgAgEWLFpGdnc27775rLtOvXz+mTp3Kgw8+CMAjjzzC3LlzMRqNldYFMBgM2BCiiEMZMWkEQQOC\nKi1nXGok+a3kGo9HRETqB40oEZGaVNWcz6aeWH9/f3Jzc83bubm5BAQEVFgmLy+PgIAAzp8/X2ld\nEakaXy9fjEuNVpUTERGxlhJTEbEnNiWxERER7N69G6PRiJ+fH4sXLyYlJcWiTHR0NElJScTExJCV\nlYWXlxc+Pj40adKk0roiUjW630VERERE6jubklgXFxeSkpLo2bMnJpOJhIQEwsLCmDdvHgBjxowh\nKiqKtLQ0QkJCcHNzY/78+RXWFREREREREbkWm+6JvRF0T6yIiIiIiEj9VdWcz6kGYxERERERERG5\nrpTEioiIiIiISJ2hJFZERERERETqDCWxIiIiIiIiUmcoiRUREREREZE6Q0msiIiIiIiI1BlKYkVE\nRERERKTOUBIrIiIiIiIidYaSWBEREREREakzlMSKiIiIiIhInaEkVkREREREROoMJbEiIiIiIiJS\nZyiJFRERERERkTpDSayIiIiIiIjUGUpixW5lZmbWdghSi9T+jk3t77jU9o5N7e+41PZSFdVOYo8f\nP86jjz7KbbfdRo8ePSgqKiq3XEZGBm3atCE0NJS5c+eaH1+yZAl33HEHzs7ObN68ubphSD2mNzPH\npvZ3bGp/x6W2d2xqf8eltpeqqHYSO2fOHB599FF27drFww8/zJw5c64qYzKZGDduHBkZGfz888+k\npKSwc+dOAO666y6+/PJLunbtWv3oRURERERExKFUO4lNTU0lPj4egPj4eJYuXXpVmZycHEJCQggK\nCqJBgwbExMSwbNkyANq0acNtt91W3dOLiIiIiIiIAzKUlZWVVaeit7c3J06cAKCsrIzGjRubty/5\n/PPP+eqrr/jggw8AWLRoEdnZ2bz77rvmMg899BBvvPEG9957b/kBGgzVCU9ERERERETqiKqkpS4V\n7Xz00UcpLCy86vFXXnnFYttgMJSbbF6PBLSaObaIiIiIiIjUQxUmsd9888019/n4+FBYWIivry+H\nDh2iefPmV5Xx9/cnNzfXvJ2bm0tAQIAN4YqIiIiIiIgjq/Y9sdHR0Xz00UcAfPTRRwwYMOCqMhER\nEezevRuj0UhJSQmLFy8mOjr6qnLqbRURERERERFrVDuJnTp1Kt988w233XYb3377LVOnTgWgoKCA\nPn36AODi4kJSUhI9e/akbdu2PPHEE4SFhQHw5ZdfEhgYSFZWFn369KF3797X4XJERERERESkPqv2\nxE41LSMjg0mTJmEymRg1ahRTpkyp7ZCkBj311FOsXLmS5s2b8+OPPwIX1yJ+4oknOHDgAEFBQXz2\n2Wd4eXnVcqRyveXm5jJ8+HCOHDmCwWBg9OjRTJgwQe3vIM6ePUu3bt04d+4cJSUl9O/fn9mzZ6v9\nHYjJZCIiIoKAgACWL1+utncgQUFBeHh44OzsTIMGDcjJyVH7O5CioiJGjRrFTz/9hMFgYP78+YSG\nhqr967lff/2VmJgY8/a+fft46aWXiI2NrVLbV7sntiZVtL6s1E8jR44kIyPD4jFr1iKWuq9Bgwa8\n+eab/PTTT2RlZfHPf/6TnTt3qv0dRMOGDVmzZg1bt25l+/btrFmzhg0bNqj9Hcjbb79N27ZtzZNB\nqu0dh8FgIDMzky1btpCTkwOo/R3JxIkTiYqKYufOnWzfvp02bdqo/R3A7bffzpYtW9iyZQubNm3C\n1dWVxx57rOptX2aHNm7cWNazZ0/z9uzZs8tmz55dixHJjbB///6yO++807x9++23lxUWFpaVlZWV\nHTp0qOz222+vrdDkBurfv3/ZN998o/Z3QKdPny6LiIgo27Fjh9rfQeTm5pY9/PDDZd9++21Z3759\ny8rK9N7vSIKCgsqOHj1q8Zja3zEUFRWVBQcHX/W42t+xfPXVV2WdO3cuKyuretvbZU9sfn4+gYGB\n5u2AgADy8/NrMSKpDYcPH8bHxwe4OBv24cOHazkiqWlGo5EtW7bQsWNHtb8DKS0t5Z577sHHx4eH\nHnqIO+64Q+3vIJ599llef/11nJz++3FEbe84DAYDjzzyCBEREXzwwQeA2t9R7N+/n2bNmjFy5Eju\nvfdenn76aU6fPq32dzCffvopQ4cOBar+2rfLJPZ6rC8r9cu11iKW+qO4uJiBAwfy9ttv4+7ubrFP\n7V+/OTk5sXXrVvLy8li3bh1r1qyx2K/2r59WrFhB8+bNCQ8Pv+YqBWr7+u27775jy5YtpKen889/\n/pP169db7Ff7118XLlxg8+bN/PnPf2bz5s24ubldNXxU7V+/lZSUsHz5cgYPHnzVPmva3i6TWK0v\nK/DftYiBa65FLPXD+fPnGThwIHFxceblutT+jsfT05M+ffqwadMmtb8D2LhxI6mpqQQHBzN06FC+\n/fZb4uLi1PYO5NZbbwWgWbNmPPbYY+Tk5Kj9HURAQAABAQG0b98egEGDBrF582Z8fX3V/g4iPT2d\n++67j2bNmgFV/9xnl0mstevLSv1mzVrEUveVlZWRkJBA27ZtmTRpkvlxtb9jOHr0KEVFRQCcOXOG\nb775hvDwcLW/A3j11VfJzc1l//79fPrpp3Tv3p2FCxeq7R3EH3/8walTpwA4ffo0X3/9NXfddZfa\n30H4+voSGBjIrl27AFi1ahV33HEH/fr1U/s7iJSUFPNQYqj65z67XWInPT3dvMROQkIC06ZNq+2Q\npAYNHTqUtWvXcvToUXx8fJg1axb9+/dnyJAhHDx4UNOs12MbNmyga9eu3H333eahI7Nnz6ZDhw5q\nfwfw448/Eh8fT2lpKaWlpcTFxfG3v/2N48ePq/0dyNq1a3njjTdITU1V2zuI/fv389hjjwEXh5YO\nGzaMadOmqf0dyLZt2xg1ahQlJSW0bt2a+fPnYzKZ1P4O4PTp07Rs2ZL9+/ebbyGr6mvfbpNYERER\nERERkSvZ5XBiERERERERkfIoiRUREREREZE6Q0msiIiIiIiI1BlKYkVERERERKTOUBIrIiIiIiIi\ndcb/B2W5B/TEb9ZzAAAAAElFTkSuQmCC\n",
       "text": [
        "<matplotlib.figure.Figure at 0x109a8b7d0>"
       ]
      }
     ],
     "prompt_number": 84
    },
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "Random trees seems to be more impacted by the addition of noisy variables also in the case of adjustment for permutation to take into account the finiteness of the dataset. Even after normalization of the VIs."
     ]
    },
    {
     "cell_type": "heading",
     "level": 2,
     "metadata": {},
     "source": [
      "Dealing with non-asomptotic regime by increasing the number of samples"
     ]
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(extra_trees.fit(X_orig, y), color='b', label='original data')\n",
      "plot_feature_importances(extra_trees.fit(X_noise_4, y), chunk=slice(0, n_features),\n",
      "                         color='g', label='original data + noisy variables')\n",
      "plt.title('Impoct of noisy features on VI from Extra Trees')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7AAAADQCAYAAAA+oY0FAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAAAAAElFTkSuQmCC\n",
       "text": [
        "<matplotlib.figure.Figure at 0x103c56cd0>"
       ]
      }
     ],
     "prompt_number": 72
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(random_trees.fit(X_orig, y), color='b', label='original data')\n",
      "plot_feature_importances(random_trees.fit(X_noise_4, y), chunk=slice(0, n_features),\n",
      "                         color='g', label='original data + noisy variables')\n",
      "plt.title('Impoct of noisy features on VI from Random Trees')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7AAAADQCAYAAAA+oY0FAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nePgANW2MjEwAAAAASUVORK5CYII=\n",
       "text": [
        "<matplotlib.figure.Figure at 0x108532210>"
       ]
      }
     ],
     "prompt_number": 71
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "def bernoulli_replicate(X, y, n_replications=3, noise_level=0.1):\n",
      "    all_data = [X]\n",
      "    all_target = [y] * (n_replications + 1)\n",
      "    for i in range(n_replications):\n",
      "        random_mask = rng.rand(X.size).reshape(X.shape) > (1 - noise_level)\n",
      "        X_corrupted = np.where(random_mask, X, np.logical_not(X))\n",
      "        all_data.append(X_corrupted)\n",
      "    return np.vstack(all_data), np.concatenate(all_target)"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [],
     "prompt_number": 80
    },
    {
     "cell_type": "code",
     "collapsed": false,
     "input": [
      "plt.figure(figsize=(16, 3))\n",
      "plot_feature_importances(random_trees.fit(*bernoulli_replicate(X_orig, y)), color='b', label='original data')\n",
      "plot_feature_importances(random_trees.fit(*bernoulli_replicate(X_noise_4, y)), chunk=slice(0, n_features),\n",
      "                         color='g', label='original data + noisy variables')\n",
      "plt.title('Impact of noisy features on VI from Random Trees')\n",
      "_ = plt.legend()"
     ],
     "language": "python",
     "metadata": {},
     "outputs": [
      {
       "metadata": {},
       "output_type": "display_data",
       "png": "iVBORw0KGgoAAAANSUhEUgAAA7AAAADQCAYAAAA+oY0FAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nRK5CYII=\n",
       "text": [
        "<matplotlib.figure.Figure at 0x108088c90>"
       ]
      }
     ],
     "prompt_number": 81
    },
    {
     "cell_type": "markdown",
     "metadata": {},
     "source": [
      "This does not seem to help with fixing the impact of noisy variables on the feature importance values."
     ]
    }
   ],
   "metadata": {}
  }
 ]
}